On the Use of Imaging Spectroscopy from Unmanned Aerial Systems (UAS) to Model Yield and Assess Growth Stages of a Broadacre Crop

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Total Pages : 0 pages
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Book Synopsis On the Use of Imaging Spectroscopy from Unmanned Aerial Systems (UAS) to Model Yield and Assess Growth Stages of a Broadacre Crop by : Amirhossein Hassanzadeh

Download or read book On the Use of Imaging Spectroscopy from Unmanned Aerial Systems (UAS) to Model Yield and Assess Growth Stages of a Broadacre Crop written by Amirhossein Hassanzadeh and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: "Snap bean production was valued at $363 million in 2018. Moreover, the increasing need in food production, caused by the exponential increase in population, makes this crop vitally important to study. Traditionally, harvest time determination and yield prediction are performed by collecting limited number of samples. While this approach could work, it is inaccurate, labor-intensive, and based on a small sample size. The ambiguous nature of this approach furthermore leaves the grower with under-ripe and over-mature plants, decreasing the final net profit and the overall quality of the product. A more cost-effective method would be a site-specific approach that would save time and labor for farmers and growers, while providing them with exact detail to when and where to harvest and how much is to be harvested (while forecasting yield). In this study we used hyperspectral (i.e., point-based and image-based), as well as biophysical data, to identify spectral signatures and biophysical attributes that could schedule harvest and forecast yield prior to harvest. Over the past two decades, there have been immense advances in the field of yield and harvest modeling using remote sensing data. Nevertheless, there still exists a wide gap in the literature covering yield and harvest assessment as a function of time using both ground-based and unmanned aerial systems. There is a need for a study focusing on crop-specific yield and harvest assessment using a rapid, affordable system. We hypothesize that a down-sampled multispectral system, tuned with spectral features identified from hyperspectral data, could address the mentioned gaps. Moreover, we hypothesize that the airborne data will contain noise that could negatively impact the performance and the reliability of the utilized models. Thus, We address these knowledge gaps with three objectives as below: 1. Assess yield prediction of snap bean crop using spectral and biophysical data and identify discriminating spectral features via statistical and machine learning approaches. 2. Evaluate snap bean harvest maturity at both the plant growth stage and pod maturity level, by means of spectral and biophysical indicators, and identify the corresponding discriminating spectral features. 3. Assess the feasibility of using a deep learning architecture for reducing noise in the hyperspectral data. In the light of the mentioned objectives, we carried out a greenhouse study in the winter and spring of 2019, where we studied temporal change in spectra and physical attributes of snap-bean crop, from Huntington cultivar, using a handheld spectrometer in the visible- to shortwave-infrared domain (400-2500 nm). Chapter 3 of this dissertation focuses on yield assessment of the greenhouse study. Findings from this best-case scenario yield study showed that the best time to study yield is approximately 20-25 days prior to harvest that would give out the most accurate yield predictions. The proposed approach was able to explain variability as high as R2 = 0.72, with spectral features residing in absorption regions for chlorophyll, protein, lignin, and nitrogen, among others. The captured data from this study contained minimal noise, even in the detector fall-off regions. Moving the focus to harvest maturity assessment, Chapter 4 presents findings from this objective in the greenhouse environment. Our findings showed that four stages of maturity, namely vegetative growth, budding, flowering, and pod formation, are distinguishable with 79% and 78% accuracy, respectively, via the two introduced vegetation indices, as snap-bean growth index (SGI) and normalized difference snap-bean growth index (NDSI), respectively. Moreover, pod-level maturity classification showed that ready-to-harvest and not-ready-to-harvest pods can be separated with 78% accuracy with identified wavelengths residing in green, red edge, and shortwave-infrared regions. Moreover, Chapters 5 and 6 focus on transitioning the learned concepts from the mentioned greenhouse scenario to UAS domain. We transitioned from a handheld spectrometer in the visible to short-wave infrared domain (400-2500 nm) to a UAS-mounted hyperspectral imager in the visible-to-near-infrared region (400-1000 nm). Two years worth of data, at two different geographical locations, were collected in upstate New York and examined for yield modeling and harvest scheduling objectives. For analysis of the collected data, we introduced a feature selection library in Python, named “Jostar”, to identify the most discriminating wavelengths. The findings from the yield modeling UAS study show that pod weight and seed length, as two different yield indicators, can be explained with R2 as high as 0.93 and 0.98, respectively. Identified wavelengths resided in blue, green, red, and red edge regions, and 44-55 days after planting (DAP) showed to be the optimal time for yield assessment. Chapter 6, on the other hand, evaluates maturity assessment, in terms of pod classification, from the UAS perspective. Results from this study showed that the identified features resided in blue, green, red, and red-edge regions, contributing to F1 score as high as 0.91 for differentiating between ready-to-harvest vs. not ready-to-harvest. The identified features from this study is in line with those detected from the UAS yield assessment study. In order to have a parallel comparison of the greenhouse study against the UAS study, we adopted the methodology employed for UAS studies and applied it to the greenhouse studies, in Chapter 7. Since the greenhouse data were captured in the visible-to-shortwave-infrared (400-2500 nm) domain, and the UAS study data were captured in the VNIR (400-1000 nm) domain, we truncated the spectral range of the collected data from the greenhouse study to the VNIR domain. The comparison experiment between the greenhouse study and the UAS studies for yield assessment, at two harvest stages early and late, showed that spectral features in 450-470, 500-520, 650, 700-730 nm regions were repeated on days with highest coefficient of determination. Moreover, 46-48 DAP with high coefficient of determination for yield prediction were repeated in five out of six data sets (two early stages, each three data sets). On the other hand, the harvest maturity comparison between the greenhouse study and the UAS data sets showed that similar identified wavelengths reside in ∼450, ∼530, ∼715, and ∼760 nm regions, with performance metric (F1 score) of 0.78, 0.84, and 0.9 for greenhouse, 2019 UAS, and 2020 UAS data, respectively. However, the incorporated noise in the captured data from the UAS study, along with the high computational cost of the classical mathematical approach employed for denoising hyperspectral data, have inspired us to leverage the computational performance of hyperspectral denoising by assessing the feasibility of transferring the learned concepts to deep learning models. In Chapter 8, we approached hyperspectral denoising in spectral domain (1D fashion) for two types of noise, integrated noise and non-independent and non-identically distributed (non-i.i.d.) noise. We utilized Memory Networks due to their power in image denoising for hyperspectral denoising, introduced a new loss and benchmarked it against several data sets and models. The proposed model, HypeMemNet, ranked first - up to 40% in terms of signal-to-noise ratio (SNR) for resolving integrated noise, and first or second, by a small margin for resolving non-i.i.d. noise. Our findings showed that a proper receptive field and a suitable number of filters are crucial for denoising integrated noise, while parameter size was shown to be of the highest importance for non-i.i.d. noise. Results from the conducted studies provide a comprehensive understanding encompassing yield modeling, harvest scheduling, and hyperspectral denoising. Our findings bode well for transitioning from an expensive hyperspectral imager to a multispectral imager, tuned with the identified bands, as well as employing a rapid deep learning model for hyperspectral denoising."--Abstract.

Soil, Agriculture, and Ecosystem Modeling

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Publisher : CRC Press
ISBN 13 : 1003837786
Total Pages : 318 pages
Book Rating : 4.0/5 (38 download)

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Book Synopsis Soil, Agriculture, and Ecosystem Modeling by : Owais Bashir

Download or read book Soil, Agriculture, and Ecosystem Modeling written by Owais Bashir and published by CRC Press. This book was released on 2024-10-18 with total page 318 pages. Available in PDF, EPUB and Kindle. Book excerpt: Soil and ecosystem modeling is crucial for managing and comprehending ecological processes and should be required for all studies focusing on agriculture systems, environmental management, environmental sciences, and ecology. Offering an array of modeling strategies that include applications of machine learning, deep learning, and other AI methods, the book explores and demonstrates soil, agriculture, and ecosystem modeling for fostering smart sustainable agricultural practices. The volume takes into account the mechanisms of climate change as well as the challenges and hazards related to soil health, providing insight into long-term and sophisticated sustainable agriculture, crop protection and management, soil carbon sequestration, and ecology preservation.

Toward Improved Crop Management Using Spectral Sensing with Unmanned Aerial Systems

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ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (135 download)

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Book Synopsis Toward Improved Crop Management Using Spectral Sensing with Unmanned Aerial Systems by : Robert Ormal Chancia

Download or read book Toward Improved Crop Management Using Spectral Sensing with Unmanned Aerial Systems written by Robert Ormal Chancia and published by . This book was released on 2021 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: "Remote sensing applications in agriculture are established for large-scale monitoring with satellite and airborne imagery, but unmanned aerial systems (UAS) are poised to bring in-field mapping capabilities to the hands of individual farmers. UAS imaging holds several advantages over traditional methods, including centimeter-scale resolution, reduced atmospheric absorption, flexible timing of data acquisitions, and ease of use. In this work, we present two studies using UAS imaging of specialty crops in upstate New York to work towards improved crop management applications. The first study is an investigation of multispectral imagery obtained over table beet fields in Batavia, NY during the 2018 and 2019 seasons to be used in root yield modeling. We determined optimal growth stages for future observations and establish the importance of quantifying early growth via determination of canopy area, a feature unattainable with lower resolution imaging. We developed models for root mass and count based on area-augmented imagery of our raw study plots and their corresponding ground truth data for practical testing with independent data sets. The second study was designed to determine an optimal subset of wavelengths derived from hyperspectral imagery that are related to grapevine nutrients for improved vineyard nutrient monitoring. Our ensemble wavelength selection and regression algorithm chose wavelengths consistent with known absorption features related to nitrogen content in vegetation. Our model achieved a leave-one-out cross-validation root-mean-squared error of 0.17% nitrogen in our dried vine-leaf samples with 2.4-3.6% nitrogen. This is an improvement upon published studies of typical UAS multispectral sensors used to assess grapevine nitrogen status. With further testing on new data, we can determine consistently selected wavelengths and guide the design of specialty multispectral sensors for improved grapevine nutrient management."--Abstract.

Toward Structural Characterization of Broadacre Crops Using UAS-based 3D Point Clouds

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ISBN 13 :
Total Pages : 0 pages
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Book Synopsis Toward Structural Characterization of Broadacre Crops Using UAS-based 3D Point Clouds by : Fei Zhang

Download or read book Toward Structural Characterization of Broadacre Crops Using UAS-based 3D Point Clouds written by Fei Zhang and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: "The use of unmanned aerial systems (UAS)-based remote sensing methods in precision agriculture (PA) has seen rapid development in recent years. These technologies are expected to revolutionize crop management by capturing imagery data with a high spatial, temporal, and spectral resolution, thereby enabling the decision-making of farm inputs at the sub-field level and on an almost daily basis. However, in real-world operational applications, the potential of UAS-based remote sensing methods has not yet been fully exploited. One of the main research avenues is that of structural characterization of crops in order to assess plant density, leaf density, i.e., overall crop health, and ultimately, crop yield. Using a UAS-based imagery system, we concurrently collected multi-source imagery data. We used structure-from-motion (SfM; photogrammetry) and light detection and ranging (LiDAR) point clouds to observe snap bean fields across two years. We hypothesized that the 3D point clouds represent essential structural information of the crop and that by extracting various features from the oversampled (dense) 3D data, we could retrieve critical structural characteristics of the crops and eventually relate them to high-level objectives, including disease risk and yield modeling. We further explored the effectiveness of feature-level data fusion between LiDAR point clouds and multispectral imagery, coupled with machine learning algorithms, for yield modeling and disease detection applications. We found that both SfM and LiDAR point clouds achieved similar high accuracies for assessment of crop height (CH) and row width (RW) (RMSE of ~0.02 m for CH and ~0.05 m for RW). For measuring the leaf area index (LAI), the LiDAR-derived models achieved the highest accuracy (R2= 0.61, nRMSE = 19%), while the SfM-derived models exhibited slightly lower values with a predicted R2≈0.5 and nRMSE ≈22%. We found that the fusion of LiDAR and MSI data yielded good results for prediction of the snap bean yield, with an Adj. R2 = 0.827 and nRMSE = 9.4%. This work demonstrated the potential of 3D point cloud data in PA applications and the performance of a UAS-based remote sensing system in monitoring short broadacre crops, such as snap bean."--Abstract.

High-resolution UAS Multispectral Imaging for Cultivar Selection in Grain Sorghum Breeding Trials

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ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (122 download)

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Book Synopsis High-resolution UAS Multispectral Imaging for Cultivar Selection in Grain Sorghum Breeding Trials by : Isaac Harrison Barnhart

Download or read book High-resolution UAS Multispectral Imaging for Cultivar Selection in Grain Sorghum Breeding Trials written by Isaac Harrison Barnhart and published by . This book was released on 2020 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: As the global human population continues to increase, there is an increased responsibility on plant breeders to develop varieties with improved productivity. Current yearly yield improvement rates are not completely estimated to meet future demands, so new technologies that allow for rapid cultivar screening and selection in large-scale breeding trials are warranted. High-resolution imagery data collected with unmanned aerial systems (UAS) shows potential to greatly assist breeders. A crop that could greatly benefit from this technology is grain sorghum (Sorghum bicolor (L). Moench). Grain sorghum is an important food, fuel, forage, and livestock feed source for many people across the world. In addition, it is well-suited to be grown in climates with limited precipitation, providing a means of food security for nations in such agro climatic regions. As global climate becomes increasingly warmer, more grain sorghum is predicted to be grown in areas that have traditionally grown with more water-dependent crops. To maximize productivity, sorghum not only needs to be selected for higher yielding cultivars, but also cultivars that can withstand abiotic stresses such as herbicide application and drought. Focusing on these two stresses, the objectives of this project were to: i) evaluate the effectiveness of UAS imagery in quantifying, detecting, and differentiating sorghum spectral response to herbicide, mesotrione, and ii) develop and evaluate a methodology to collect, process, extract, and compare UAS data to select for traits related to drought tolerance in grain sorghum. For the first objective, a field experiment was sown in the 2019 growing season (Ashland Bottoms, Manhattan, KS) consisting of a mesotrione tolerant and susceptible genotypes, and a commercial grain sorghum hybrid for comparison. Plots were sprayed with 0, 105, 420, and 840 g ae (acid equivalent) ha-1 of mesotrione, and weekly flights were flown over the experiment up to 35 days after treatment (DAT). Ground-measured herbicide damage ratings were taken, and were compared to vegetative indices (VIs) derived from the imagery. Results showed highly-significant relationships between VIs and ground ratings. For the second objective, an experiment with 20 commercial hybrids was planted in 2019 (Manhattan, KS). Flights were flown at the flowering (F), soft dough (SD), hard dough (HD), and physiological maturity (PM) growth stages. Ground-samples that were collected included whole plant biomass, leaf biomass, stem biomass, senescence scores, leaf area index, and final grain yield. Results showed that the near infrared (NIR) spectral band was the most significant to plant traits related to biomass, the green normalized difference vegetation index (GNDVI) was highly significant to yield, and the visible atmospheric resistant index (VARI) was the most related to both senescence at PM and senescence rates. A hierarchical clustering analysis showed that through all stages, significant differences among groups could be detected. These results suggest that multi-spectral imagery data collected via UAS could be very useful for sorghum breeders to differentiate between grain sorghum hybrids in large-scale breeding trials, particularly for breeders looking to increase herbicide tolerance in grain sorghum and to develop more drought-resistant cultivars.

Spectroscopy, imaging and machine learning for crop stress

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Publisher : Frontiers Media SA
ISBN 13 : 2832532209
Total Pages : 176 pages
Book Rating : 4.8/5 (325 download)

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Book Synopsis Spectroscopy, imaging and machine learning for crop stress by : Shizhuang Weng

Download or read book Spectroscopy, imaging and machine learning for crop stress written by Shizhuang Weng and published by Frontiers Media SA. This book was released on 2023-08-21 with total page 176 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Applications of Remote Sensing in Agriculture

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Publisher : Elsevier
ISBN 13 : 1483161781
Total Pages : 444 pages
Book Rating : 4.4/5 (831 download)

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Book Synopsis Applications of Remote Sensing in Agriculture by : M. D. Steven

Download or read book Applications of Remote Sensing in Agriculture written by M. D. Steven and published by Elsevier. This book was released on 2013-10-22 with total page 444 pages. Available in PDF, EPUB and Kindle. Book excerpt: Applications of Remote Sensing in Agriculture contains the proceedings of the 48th Easter School in Agricultural Science, held at the University of Nottingham on April 3-7, 1989. The meeting invites 146 delegates from over 22 countries and contributions to this book come from nine countries. This book generally presents a review of the achievements of remote sensing in agriculture, establishes the state of the art, and gives pointers to developments. This text is organized into seven parts, wherein Parts I-III cover the principles of remote sensing, climate, soil, land classification, and crop inventories. Productivity; stress; techniques for agricultural applications; and opportunities, progress, and prospects in the field of remote sensing in agriculture are also discussed.

Cotton Production Manual

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Publisher : University of California, Agriculture and Natural Resources
ISBN 13 : 9781879906099
Total Pages : 430 pages
Book Rating : 4.9/5 (6 download)

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Book Synopsis Cotton Production Manual by : S. Johnson Hake

Download or read book Cotton Production Manual written by S. Johnson Hake and published by University of California, Agriculture and Natural Resources. This book was released on 1996 with total page 430 pages. Available in PDF, EPUB and Kindle. Book excerpt: The Cotton Production Manual was written for growers everywhere who strive to improve cotton quality and productivity. Features a season-by season production calendar with pest and disease control, fertilization, and irrigation tips and a Diagnostic Guide to help you identify crop problems in the field with management options. 12 pages of color plates.

Implementation and Evaluation of Unmanned Aerial Vehicles and Sensor Systems in Weed Research

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Publisher :
ISBN 13 : 9783736971783
Total Pages : 110 pages
Book Rating : 4.9/5 (717 download)

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Book Synopsis Implementation and Evaluation of Unmanned Aerial Vehicles and Sensor Systems in Weed Research by : Robin Mink

Download or read book Implementation and Evaluation of Unmanned Aerial Vehicles and Sensor Systems in Weed Research written by Robin Mink and published by . This book was released on 2020-03-13 with total page 110 pages. Available in PDF, EPUB and Kindle. Book excerpt: Eine wirkungsvolle Unkrautbekämpfung ist seit jeher ein zentraler Bestandteil des Kulturpflanzenanbaus. Seit der Erfindung und Kommerzialisierung des chemischen Pflanzenschutzes nimmt jedoch die Kritik gegenüber der vermehrten Anwendung von Herbiziden stetig zu. Heutzutage unterstützen Precision Farming Technologien Landwirte und Wissenschaftler bei der präzisen Durchführung und Überwachung von Unkrautbekämpfungsmaßnahmen. Die Weiterentwicklung der sensorgestützten Informationstechnologie in der Herbologie bietet neue Möglichkeiten, Unkrautmanagementstrategien hinsichtlich ihrer Wirksamkeit und Nachhaltigkeit zu bewerten und zu verbessern. Der Fokus dieser Dissertation lag auf der Entwicklung und Bewertung von Methoden zur Reduktion des Herbizideinsatzes, sowie auf der sensorgestützten Überwachung der Reaktion von Kulturpflanzen und Unkräutern nach einer Herbizidapplikation. Besonderes Augenmerk wurde auf die Entwicklung von Erfassungsmethoden mit unbemannten Luftfahrzeugen (UAVs), als Sensorträger, und bodengestützten Sensoren gelegt.

Application of UASs to Augment Ground Surveys in Cranberry Agriculture Development

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ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (128 download)

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Book Synopsis Application of UASs to Augment Ground Surveys in Cranberry Agriculture Development by : John A. Danahy

Download or read book Application of UASs to Augment Ground Surveys in Cranberry Agriculture Development written by John A. Danahy and published by . This book was released on 2017 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Assessing the potential for developing wetland environments into cranberry agricultural lands is time consuming and expensive. The addition of unmanned aerial systems (UAS) to augment current ground survey techniques has the potential to increase assessment accuracy and cranberry production while reducing costs. Newfoundland's extensive wetlands offer significant opportunities for the development of cranberry agricultural lands. Due to a large international demand for raw cranberries, there is great potential economic benefit in the rapid development of cranberry farms. This study focused on using UASs to assess wetland areas in Newfoundland by applying suitability criteria developed by the Newfoundland Government. This was done through the use of GIS, image classification, and photogrammetry to assess these criteria over three site locations. The viability of expanding UAS data collection over larger areas to develop a province-wide model was explored through an assessment of current fixed wing UAS technology. Given the novelty of this area of study, this research aimed to serve as a proof of concept where the validity of results was measured against real world applicability, not statistical analysis. The results showed that because UASs cannot assess all of the required wetland criteria, they are not a viable replacement for current ground surveys, but do have the potential to augment current techniques. UASs make it possible to survey larger areas, as well as reduce time and cost. The assessment of current fixed wing UAS technology concluded that given the continuously improving technology and further testing, there is the potential for these systems to collect comparable data over a larger area. Overall, the study concluded that through the strategic integration of the UAS techniques developed in this study with existing ground survey methods, Newfoundland has the potential to increase cranberry agricultural development and capitalize on the global demand for this crop.

The Vertical Farm

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Publisher : Macmillan
ISBN 13 : 1429946040
Total Pages : 321 pages
Book Rating : 4.4/5 (299 download)

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Book Synopsis The Vertical Farm by : Dickson Despommier

Download or read book The Vertical Farm written by Dickson Despommier and published by Macmillan. This book was released on 2010-10-12 with total page 321 pages. Available in PDF, EPUB and Kindle. Book excerpt: "The vertical farm is a world-changing innovation whose time has come. Dickson Despommier's visionary book provides a blueprint for securing the world's food supply and at the same time solving one of the gravest environmental crises facing us today."--Sting Imagine a world where every town has their own local food source, grown in the safest way possible, where no drop of water or particle of light is wasted, and where a simple elevator ride can transport you to nature's grocery store - imagine the world of the vertical farm. When Columbia professor Dickson Despommier set out to solve America's food, water, and energy crises, he didn't just think big - he thought up. Despommier's stroke of genius, the vertical farm, has excited scientists, architects, and politicians around the globe. Now, in this groundbreaking book, Despommier explains how the vertical farm will have an incredible impact on changing the face of this planet for future generations. Despommier takes readers on an incredible journey inside the vertical farm, buildings filled with fruits and vegetables that will provide local food sources for entire cities. Vertical farms will allow us to: - Grow food 24 hours a day, 365 days a year - Protect crops from unpredictable and harmful weather - Re-use water collected from the indoor environment - Provide jobs for residents - Eliminate use of pesticides, fertilizers, or herbicides - Drastically reduce dependence on fossil fuels - Prevent crop loss due to shipping or storage - Stop agricultural runoff Vertical farms can be built in abandoned buildings and on deserted lots, transforming our cities into urban landscapes which will provide fresh food grown and harvested just around the corner. Possibly the most important aspect of vertical farms is that they can built by nations with little or no arable land, transforming nations which are currently unable to farm into top food producers. In the tradition of the bestselling The World Without Us, The Vertical Farm is a completely original landmark work destined to become an instant classic.

Remote Sensing

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Publisher : Oxford University Press
ISBN 13 : 0195178173
Total Pages : 701 pages
Book Rating : 4.1/5 (951 download)

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Book Synopsis Remote Sensing by : John R. Schott

Download or read book Remote Sensing written by John R. Schott and published by Oxford University Press. This book was released on 2007-05-25 with total page 701 pages. Available in PDF, EPUB and Kindle. Book excerpt: Remote Sensing deals with the fundamental ideas underlying the rapidly growing field of remote sensing. John Schott explores energy-matter interaction, radiation propagation, data dissemination, and described the tools and procedures required to extract information from remotely sensed data using the image chain approach. Organizations and individuals often focus on one aspect of the remote sensing process before considering it as a whole, thus investigating unjustified effort, time, and expense to get minimal improvement. Unlike other books on the subject, Remote Sensing treats the process as a continuous flow. Schott examines the limitations obstructing the flow of information to the user, employing numerous applications of remote sensing to earth observation disciplines. For this second edition, in addition to a thorough update, there are major changes and additions, such as a much more complete treatment of spectroscopic imaging, which has matured dramatically in the last ten years, and a more rigorous treatment of image processing with an emphasis on spectral image processing algorithms. Remote Sensing is an ideal first text in remote sensing for advanced undergraduate and graduate students in the physical or engineering sciences, and will also serve as a valuable reference for practitioners.

Plant Scale Characterization Using Unmanned Aerial Systems Point Cloud and Reflectance Maps for Modeling Vine and Soil/cover Crop Water Use

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Publisher :
ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (15 download)

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Book Synopsis Plant Scale Characterization Using Unmanned Aerial Systems Point Cloud and Reflectance Maps for Modeling Vine and Soil/cover Crop Water Use by :

Download or read book Plant Scale Characterization Using Unmanned Aerial Systems Point Cloud and Reflectance Maps for Modeling Vine and Soil/cover Crop Water Use written by and published by . This book was released on 2018 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

The Future of Agricultural Technologies

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Publisher :
ISBN 13 : 9780648330349
Total Pages : pages
Book Rating : 4.3/5 (33 download)

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Book Synopsis The Future of Agricultural Technologies by : Stewart Lockie

Download or read book The Future of Agricultural Technologies written by Stewart Lockie and published by . This book was released on 2020-07-31 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

Multispectral In-field Sensors Observations to Estimate Corn Leaf Nitrogen Concentration and Grain Yield Using Machine Learning

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Publisher :
ISBN 13 :
Total Pages : 92 pages
Book Rating : 4.:/5 (132 download)

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Book Synopsis Multispectral In-field Sensors Observations to Estimate Corn Leaf Nitrogen Concentration and Grain Yield Using Machine Learning by : Razieh Barzin

Download or read book Multispectral In-field Sensors Observations to Estimate Corn Leaf Nitrogen Concentration and Grain Yield Using Machine Learning written by Razieh Barzin and published by . This book was released on 2021 with total page 92 pages. Available in PDF, EPUB and Kindle. Book excerpt: Nitrogen (N) is the most critical fertilizer applied nutrient for supporting plant growth. It is a critical part of photosynthesis as a component of chlorophyl, hence it is a key indicator of plant health. In recent years, rapid development of multispectral sensing technology and machine learning (ML) methods make it possible to estimate leaf chemical components such as N for predicting yield spatially and temporally. The objectives of this study were to compare the relationships between canopy reflectance and corn (Zea mays L.) leaf N concentration acquired by two multispectral sensors: red-edge multispectral camera mounted on the Unmanned Aerial Vehicle (UAV) and crop circle ACS-430. Four fertilizer N rates were applied, ranging from deficient to excessivein order to have a broad rangein plant N status. Spectral information was collected at different phenological stages of corn to calculate vegetation indices (VIs) for each stage. Moreover, leaf samples were taken simultaneously to determine N concentration. Different ML methods (Multi-Layer Perceptron (MLP), Support Vector Machines (SVMs), Random Forest regression, Regularized regression models, and Gradient Boosting) were used to estimate leaf N% from VIs and predict yield from VIs. Random Forest Regression was utilized as a feature selection method to choose the best combination of variables for different stages and to interpret the relationships between VIs and corn leaf N concentration and grain yield. The Canopy Chlorophyll Content Index (SCCCI) and Red-edge Ratio Vegetation Index (RERVI) were selected as the most efficient VIs in leaf N estimation and SCCCI, Red-edge chlorophyll index (CIRE), RERVI, Soil Adjusted Vegetation Index (SAVI), and Normalized Difference Vegetation Index (NDVI) were chosen as the most effective VIs in predicting corn grain yield. The results derived from using a red-edge multispectral camera showed that the SCCCI was the most proper index for predicting yield at most of the phenological stages and Gradient Boosting was the best-fitted model to estimate leaf N% with an 80% coefficient of determination. Using a Crop Circle ACS-430 showed that the Support Vector Regression (SVR) model achieved the best performance measures than other models tested in the prediction of leaf N concentration.

Precision Agriculture Technology for Crop Farming

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Publisher : CRC Press
ISBN 13 : 1000218988
Total Pages : 390 pages
Book Rating : 4.0/5 (2 download)

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Book Synopsis Precision Agriculture Technology for Crop Farming by : Qin Zhang

Download or read book Precision Agriculture Technology for Crop Farming written by Qin Zhang and published by CRC Press. This book was released on 2015-10-15 with total page 390 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book provides a review of precision agriculture technology development, followed by a presentation of the state-of-the-art and future requirements of precision agriculture technology. It presents different styles of precision agriculture technologies suitable for large scale mechanized farming; highly automated community-based mechanized production; and fully mechanized farming practices commonly seen in emerging economic regions. The book emphasizes the introduction of core technical features of sensing, data processing and interpretation technologies, crop modeling and production control theory, intelligent machinery and field robots for precision agriculture production.

Supply Chain Management for Sustainable Food Networks

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Author :
Publisher : John Wiley & Sons
ISBN 13 : 1118930754
Total Pages : 335 pages
Book Rating : 4.1/5 (189 download)

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Book Synopsis Supply Chain Management for Sustainable Food Networks by : Eleftherios Iakovou

Download or read book Supply Chain Management for Sustainable Food Networks written by Eleftherios Iakovou and published by John Wiley & Sons. This book was released on 2016-01-19 with total page 335 pages. Available in PDF, EPUB and Kindle. Book excerpt: An interdisciplinary framework for managing sustainable agrifood supply chains Supply Chain Management for Sustainable Food Networks provides an up-to-date and interdisciplinary framework for designing and operating sustainable supply chains for agri-food products. Focus is given to decision-making procedures and methodologies enabling policy-makers, managers and practitioners to design and manage effectively sustainable agrifood supply chain networks. Authored by high profile researchers with global expertise in designing and operating sustainable supply chains in the agri-food industry, this book: Features the entire hierarchical decision-making process for managing sustainable agrifood supply chains. Covers knowledge-based farming, management of agricultural wastes, sustainability, green supply chain network design, safety, security and traceability, IT in agrifood supply chains, carbon footprint management, quality management, risk management and policy- making. Explores green supply chain management, sustainable knowledge-based farming, corporate social responsibility, environmental management and emerging trends in agri-food retail supply chain operations. Examines sustainable practices that are unique for agriculture as well as practices that already have been implemented in other industrial sectors such as green logistics and Corporate Social Responsibility (CSR). Supply Chain Management for Sustainable Food Networks provides a useful resource for researchers, practitioners, policy-makers, regulators and C-level executives that deal with strategic decision-making. Post-graduate students in the field of agriculture sciences, engineering, operations management, logistics and supply chain management will also benefit from this book.