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The main goal of the book is to explore the idea behind data modeling in smart agriculture using information and communication technologies and tools to make agricultural practices more functional, fruitful and profitable. 
The research in the book looks at the likelihood and level of use of implemented technological components with regard to the adoption of different precision agricultural technologies. To identify the variables affecting farmers' choices to embrace more precise technology, zero-inflated Poisson and negative binomial count data regression models were utilized. Outcomes from the count data analysis of a random sample of various farm operators show that various aspects, including farm dimension, farmer demographics, soil texture, urban impacts, farmer position of liabilities, and position of the farm in a state, were significantly associated with the approval severity and likelihood of precision farming technologies. 
Farm management information systems (FMIS) have constantly advanced in complexity as they have incorporated new technology, the most recent of which is the internet. However, few FMIS have fully tapped into the internet's possibilities, and the newly developing idea of precision agriculture receives little or no support in the FMIS that are now being sold. FMIS for precision agriculture must meet a few more criteria beyond those of regular FMIS, which increases the technological complexity of these systems' deployment in a number of ways. In order to construct an FMIS that meet these extra needs, the authors here evaluated various cutting-edge web-based methods. The goal was to determine the requirements that precision agriculture placed on FMIS.
Contents
Preface xiii
 1 Analyzing the Impact of Food Safety Regulations on Agricultural Supply Chains: A Mathematical Modeling Perspective 1
 Nimit Kumar, Shwetha M.S., Govind Shay Sharma, Nitin Ubale, Nuzhat Fatima Rizvi and Dharmesh Dhabliya
 1.1 Introduction 2
 1.2 Resources and Techniques 4
 1.3 Results and Analysis 6
 1.3.1 Knowledge, Application, and Obstacles to Food Modeling 6
 1.3.2 Obstacles to Our Company's Use of Mathematical Modeling 7
 1.4 Conclusion 12
 References 13
 2 Modeling the Effects of Land Degradation on Agricultural Productivity: Implications for Legal and Policy Interventions 17
 Amit Verma, Istita Auddy, Murli Manohar Gour, Dhwani Bartwal, Sukhvinder Singh Dari and Ankur Gupta
 2.1 Introduction 18
 2.2 Materials and Procedures 20
 2.2.1 Content of Minerals 23
 2.3 Results and Analysis 24
 2.4 Conclusion 28
 References 29
 3 Mathematical Modeling of Carbon Sequestration in Agricultural Soils: Implications for Climate Change Mitigation Policies 33
 Kailash Malode, Brijpal Singh Rajawat, Amar Shankar S., Ravindra Kumar, Deepti Khubalkar and Sabyasachi Pramanik
 3.1 Introduction 34
 3.2 Resources and Techniques 35
 3.2.1 Reference Trial 36
 3.2.2 Interviews with Agriculturists in London Suburb and Liverpool 38
 3.2.2.1 Overall Explanation of the Sampled Region and Organized Interviews 38
 3.2.3 Online Tools for Calculating CF 38
 3.3 Results 40
 3.3.1 Agricultural Data as Model I/P 40
 3.3.1.1 Case Study 40
 3.3.1.2 From Discussions with Farmers 41
 3.3.2 Farms' Estimated GHG Emissions 43
 3.3.3 Effects of Mitigating Measures 44
 3.4. Discussion 44
 3.4.1 Evaluating the Possible Effects of Mitigating Measures 46
 3.5 Conclusions 47
 References 48
 4 Optimizing Livestock Feed Formulation for Sustainable Agriculture: A Mathematical Modeling Approach 51
 Rutul Patel, Upasana, Ashutosh Pattanaik, Deepak Kumar, Ahmar Afaq and Soma Bag
 4.1 Introduction 52
 4.2 Managing Swine Herds Using Modeling 53
 4.2.1 System of a Sow Herd 53
 4.2.2 Major Statistical Techniques Used in Modeling Cattle Herds 55
 4.2.2.1 Literature Review on Herd Modeling for Cattle 55
 4.2.2.2 Models for Simulation 56
 4.2.2.3 Models for Optimization 56
 4.2.2.4 The Integration of Simulation and Optimization 57
 4.3 Models of a Sow Herd 58
 4.3.1 Chosen Models 58
 4.3.2 Input Criteria 59
 4.3.2.1 Parameters Used as Inputs in Optimization Models 59
 4.3.2.2 Parameters Used as Inputs in Simulation Techniques 60
 4.3.3 Results from the Models 61
 4.3.4 The Models' Validation 62
 4.3.5 Opportunities for Implementation and Integration 63
 4.3.6 Management of Risk 64
 4.3.7 Additional Submissions and Literature Review 64
 4.4 Discussion 65
 4.5 Conclusions 68
 References 69
 5 Modeling the Economic Impact of Agricultural Regulations: A Case Study on Environmental Compliance Costs 81
 Vikesh Rami, Sunil Kumar, Gautham Krishna, Abhinav, Sukhvinder Singh Dari and Dharmesh Dhabliya
 5.1 Introduction 82
 5.2 Mechanisms Study Time and Location 83
 5.3 Sampling 85
 5.4 Analysis, Both Physical and Chemical 85
 5.5 Module for Water Quality 87
 5.6 Particulate Phosphorus and Suspended Solids 87
 5.7 Calculation of PP 88
 5.8 Model Caliphy 89
 5.9 Scientifications Described by the Model 94
 5.10 Simulation of Sediment Trap 96
 5.11 Pumping Profile Modifications Simulation 98
 5.12 Conclusion 98
 References 99
 6 Quantifying the Economic Benefits of Precision Agriculture Technologies: A Mathematical Modeling Study 103
 Deepak Kumar, Apexaben Rathod, Sachchida Nand Singh, Meena Y. R., Rushil Chandra and Ankur Gupta
 6.1 Introduction 104
 6.2 Method and Materials 107
 6.3 Conclusion and Results 110
 6.4 Conclusions 112
 References 113
 7 Optimizing Resource Allocation in Agribusinesses: A Mathematical Modeling Approach Considering Legal Factors 115
 Vishvendra Singh, Navghan Mahida, Anand Janardan Madane, Sudhakar Reddy, Parth Sharma and Sabyasachi Pramanik
 Introduction 116
 Methods 119
 A Framework for the Transmission and Command
 of Brucellosis: A Case Study Overview 120
 Brucellosis Nominal Transmission Modeling 120
 Modeling Disease Costs and Control Capabilities 124
 Creating a Cost Model and Confronting the Challenge of Control Design 125
 Analysis, Design, and Parameterization Techniques 127
 Overview of the Control and Surveillance Design 128
 Network Model Identification and Validation for Zoonoses 129
 Results 130
 Indicative Model 131
 Control Strategy Modeling 135
 Optimized Approaches 137
 Parameterization 143
 Discussion 143
 Wide-Ranging Perspectives on High-Performance Control 144
 Talking About Parameterzing Models 147
 Conclusion 148
 References 150
 8 Modeling the Dynamics of Agricultural Cooperatives and Legal Implications for Farmer Organizations 153
 Shiv Shankar Shankar, Prashantkumar Zala, Ashutosh Awasthi, Ezhilarasan G., Sukhvinder Singh Dari and Soma Bag
 8.1 Introduction 154
 8.2 Resources and Techniques 155
 8.3 Conclusion 160
 References 160
 9 Optimizing Agroforestry Systems for Sustainable Agriculture: A Mathematical Modeling Approach 163
 Beemkumar Nagappan, Aakriti Chauhan, Chandni Mori, Praveen Kumar Singh, Shilpa Sharma and Sabyasachi Pramanik
 9.1 Introduction 164
 9.2 Relationships Between Structure and Activity (SAR) and the Level of Toxicological Involvement 169
 9.3 Threshold Approaches 174
 9.4 Reciprocal Analysis 178
 9.5 Chemical-Specific Adjustments 183
 Conclusion 184
 References 185
 10 Simulating the Effects of Climate-Smart Agriculture Practices on Farm Resilience: A Mathematical Modeling Approach 189
 Kiran K. S., Meenakshi Dheer, Mukesh Laichattiwar, Devendra Pal Singh, Vaidehi Pareek and Soma Bag
 10.1 Introduction 190
 10.2 Definitions, Concepts, and Methods for the Analytical Framework 191
 10.3 Results 194
 10.4 Consequences for Political Implementations 203
 10.5 Advanced Research 204
 10.6 Conclusions 206
 References 207
 11 Modeling the Dynamics of Agrochemical Regulations and Impacts on Agricultural Productivity 211
 Hannah Jessie Rani, Akanchha Singh, Aishwary Awasthi, Ashwani Rawat, Nuvita Kalra and Ankur Gupta
 11.1 Introduction 212
 11.2 Resources and Techniques 213
 11.3 Results 216
 11.4 Discussion 217
 11.5 Conclusion 219
 References 220
 12 Optimizing Energy Consumption in Greenhouse Production: A Mathematical Modeling Approach 223
 Beemkumar Nagappan, Arun Gupta, Sachin Gupta, Diksha Nautiyal, Aarti Kalnawat and Dharmesh Dhabliya
 12.1 Introduction 224
 12.2 Literature Review 227
 12.3 The Creation of Mathematical Models a Range of Models 229
 12.4 Formulation of a Model 231
 12.5 Modeling of Groundwater Quality 242
 12.6 Conclusion 244
 References 244
 13 Analyzing the Economic and Legal Impacts of Intellectual Property Rights on Plant Breeding Innovations: A Mathematical Modeling Study 249
 Gopalakrishna K., Bhirgu Raj Maurya, Rajeev Kumar, Sushila Arya, Himanshi Bhatia and Ankur Gupta
 13.1 Introduction 250
 13.2 Competition Postulates 251
 13.3 Transparent Competition 251
 13.3.1 Effect of Competitiveness-Density 252
 13.3.2 Changes to the Population's Size Structure 252
 13.4 Concurrence Inter-Specific 253
 13.4.1 Adding Damage 254
 13.4.2 Neighborhood Function 256
 13.4.3 Innovative Design and Analysis 256
 13.5 Dynamic Plant Growth and Competition Models 256
 13.5.1 Dynamic Population 258
 13.6 Aspects Impacting the Result of Competitiveness 259
 13.7 Crop-Weed Competition Models Applied in Practical Situations 260
 13.8 Conclusion 261
 References 262
 14 Simulating the Effects of Land Use Regulations on Agricultural Land Values: A Mathematical Modeling Study 265
 Ashwani Rawat, Ramachandran T., Yogesh Chandra Gupta, Manoj Kumar Mishra, Gabriela Michael and Sabyasachi Pramanik
 14.1 Introduction 266
 14.2 Models of Component Agricultural Systems 267
 14.3 Present-Day Farming System Frameworks in Relation to Certain Application Situations 284
 14.4 Discussion 286
 References 290
 15 Simulating the Effects of Agricultural Land Fragmentation on Farm Effciency: A Mathematical Modeling Analysis 295
 Diksha Nautiyal, Manjunath H. R., Praveen Kumar Singh, Umesh Kumar Tripathi, Saurabh Raj and Soma Bag
 15.1 Introduction 296
 15.2 Conceptual Foundation 297
 15.3 Resources and Techniques Household Polls 299
 15.4 Results 306
 15.5 Discussion 313
 15.6 Conclusions 316
 References 317
 16 Simulating the Effects of Land Use Policies on Agricultural Productivity: A Mathematical Modeling Perspective 321
 Vinaya Kumar Yadav, Sushila Arya, Asha Rajiv R., Devendra Pal Singh, Siddharth Ranka and Dharmesh Dhabliya
 16.1 Introduction 322
 16.2 Upcoming Applications of NextGen Farming Frameworks 326
 16.3 Envisioned Consumers of the Application Chain Beneficiaries 331
 16.4 Conclusion and Research Plan 340
 References 341
 17 Quantifying the Economic Benefits of Agricultural Extension Services: A Mathematical Modeling Analysis 345
 Rajeev Kumar, Satendra Kumar, Pradeepa P., Akanchha Singh, Karun Sanjaya and Ankur Gupta
 17.1 Introduction 346
 17.2 Creating New Models for the Future: A Demand-Driven, Prospective Strategy 347
 17.3 Potential Improvements to Model Elements 355
 17.4 Conclusions 367
 References 368
 18 Modeling the Impact of Agricultural Investment Incentives on Rural Development: Legal and Economic Perspectives 373
 Dal Chandra, Manoj Kumar Mishra, Ankit Pant, Ahmadi Begum, Sukhvinder Singh Dari and Dharmesh Dhabliya
 18.1 Introduction 374
 18.2 Approach 376
 18.3 Conversation 384
 18.4 Conclusion 390
 References 391
 19 Optimizing Harvest Scheduling in Agriculture: A Mathematical Modeling Approach Considering Legal Restrictions 397
 Heejeebu Shanmukha Viswanath, Umesh Kumar Tripathi, Minnu Sasi, Kishore Kumar Pedapenki, Prashant Dhage and Ankur Gupta
 19.1 Initialization 398
 19.2 Structure of the System 406
 19.3 Irrigation Community Event 409
 19.4 Assessment and Authentication 412
 19.5 Conclusions 416
 References 418
 20 Quantifying the Economic Benefits of Agricultural Data Sharing: A Mathematical Modeling Perspective 421
 Aruno Raj Singh, Vinaya Kumar Yadav, Laishram Zurika, Dasarathy A. K., Abhishekh Benedict and Dharmesh Dhabliya
 20.1 Introduction 422
 20.2 Model for Data Mining Process 423
 20.3 Techniques for Machine Learning 424
 20.4 Website Tools 429
 20.5 Case Study: Grading of Mushrooms 431
 20.6 Conclusion 432
 References 433
 Index 437


 
               
               
              


