Precision Irrigation for Agriculture: Integrating Machine Learning and Optimal Control Strategies
暫譯: 精準農業灌溉:整合機器學習與最佳控制策略
Twum Agyeman, Bernard, Liu, Jinfeng
- 出版商: Wiley
- 出版日期: 2026-05-11
- 售價: $5,270
- 貴賓價: 9.5 折 $5,006
- 語言: 英文
- 頁數: 208
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 1394288522
- ISBN-13: 9781394288526
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相關分類:
Reinforcement
海外代購書籍(需單獨結帳)
商品描述
Advanced methodologies in machine learning, optimal control, and agricultural water management to address irrigation scheduling in large-scale agriculture
Through a multidisciplinary approach, Precision Irrigation for Agriculture presents rigorous and practical methods that integrate machine learning, optimal control, and agricultural water management to design irrigation schedulers tailored for large-scale agricultural fields. The book includes case studies and comparative studies, bridging the gap between theory and real-world application.
The book begins with a thorough review of existing irrigation scheduling practices and recent advancements in the field, then proceeds to examine the application of machine learning methods and optimal control strategies to address various challenges in irrigation scheduling.
The central focus of the book is the development of a novel irrigation scheduler. This novel scheduler unifies model predictive control with three machine learning paradigms--supervised, unsupervised, and reinforcement learning--into a cohesive framework specifically designed for the daily irrigation scheduling problem in large-scale agricultural fields.
The book also presents a computationally efficient methodology that leverages remote sensing observations to estimate soil moisture content and soil hydraulic parameters, which are key elements in the design of precise irrigation schedulers.
Written by a team of qualified academics, Precision Irrigation for Agriculture includes information on:
- Soil moisture modeling, including water content, energy status of soil water, the soil water retention curve, Darcy's law, and the Richards' equation
- Model predictive control and its application in irrigation scheduling, covering problem formulation, feasibility, solution techniques, and controller tuning
- Parameter selection and state estimation, including sensitivity analysis for parameter identifiability, the orthogonal projection method for parameter selection, and extended Kalman filter for simultaneous state and parameter estimation
- Multi-agent reinforcement learning for irrigation scheduling, including the integration of decentralized actor-critic agents, the limiting management zone concept, and model predictive control (MPC) to form a multi-agent MPC paradigm for irrigation scheduling; a semi-centralized multi-agent reinforcement learning framework to further refine irrigation timing decisions; and agent design, testing, and comparative studies against traditional irrigation scheduling schemes.
Precision Irrigation for Agriculture is a valuable resource for researchers in process control and irrigation management, irrigation practitioners, and students of agriculture, water management, machine learning, and optimal control.
商品描述(中文翻譯)
機器學習、最佳控制及農業水資源管理的進階方法論,以解決大規模農業的灌溉排程問題
透過多學科的方式,農業精準灌溉 提出了嚴謹且實用的方法,整合機器學習、最佳控制及農業水資源管理,設計適合大規模農業田地的灌溉排程器。本書包含案例研究和比較研究,彌合理論與實際應用之間的鴻溝。
本書首先對現有的灌溉排程實務及該領域的最新進展進行全面回顧,然後探討機器學習方法和最佳控制策略在解決灌溉排程各種挑戰中的應用。
本書的核心重點是開發一個新穎的灌溉排程器。這個新排程器將模型預測控制與三種機器學習範式——監督式、非監督式和強化學習——統一成一個專門為大規模農業田地的日常灌溉排程問題設計的整合框架。
本書還提出了一種計算效率高的方法,利用遙感觀測來估算土壤水分含量和土壤水力參數,這些都是設計精確灌溉排程器的關鍵要素。
由一組合格的學者撰寫的 農業精準灌溉 包含以下資訊:
- 土壤水分建模,包括水分含量、土壤水的能量狀態、土壤水保持曲線、達西定律及理查德方程
- 模型預測控制及其在灌溉排程中的應用,涵蓋問題的公式化、可行性、解決技術及控制器調整
- 參數選擇和狀態估計,包括參數可識別性的敏感度分析、參數選擇的正交投影法,以及同時狀態和參數估計的擴展卡爾曼濾波器
- 用於灌溉排程的多智能體強化學習,包括去中心化的行為者-評論者代理的整合、限制管理區概念,以及模型預測控制(MPC)形成灌溉排程的多智能體MPC範式;一個半中心化的多智能體強化學習框架進一步精煉灌溉時機決策;以及代理設計、測試和與傳統灌溉排程方案的比較研究。
農業精準灌溉 是一個對於過程控制和灌溉管理研究者、灌溉實務者,以及農業、水資源管理、機器學習和最佳控制的學生來說,都是一個寶貴的資源。
作者簡介
BERNARD TWUM AGYEMAN, Postdoctoral Associate, Department of Chemical Engineering and Materials Science, University of Minnesota, Minneapolis, USA. His current research explores the use of reinforcement learning and graph-based techniques to solve mixed-integer optimization problems. His PhD research focused on employing machine learning, optimal control, and estimation methods to develop precise irrigation scheduling algorithms.
JINFENG LIU, Professor, Chemical and Materials Engineering Department, University of Alberta, Edmonton, Canada. He currently serves as the editor-in-chief for the IChemE journal Digital Chemical Engineering and holds roles as an associate editor for several other journals.
作者簡介(中文翻譯)
伯納德·特溫·阿傑曼,明尼蘇達大學化學工程與材料科學系的博士後研究員。他目前的研究探索使用強化學習和基於圖形的技術來解決混合整數優化問題。他的博士研究專注於利用機器學習、最優控制和估計方法來開發精確的灌溉排程演算法。
劉金峰,阿爾伯塔大學化學與材料工程系教授。他目前擔任《IChemE》期刊《數位化學工程》的主編,並在其他幾本期刊中擔任副編輯。