Optimization of Sustainable Process Systems
暫譯: 可持續過程系統的優化
Li, Can
- 出版商: Wiley
- 出版日期: 2026-04-09
- 售價: $7,080
- 貴賓價: 9.8 折 $6,938
- 語言: 英文
- 頁數: 416
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 1394205570
- ISBN-13: 9781394205578
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相關分類:
工程數學 Engineering-mathematics
海外代購書籍(需單獨結帳)
商品描述
Presents a systematic review of optimizing sustainable process systems through multiscale modeling and uncertainty analysis
The global pursuit of net-zero carbon emissions has created an urgent need for chemical engineers and energy researchers to design systems that are both sustainable and resilient. While renewable energy sources such as solar and wind offer great potential, their variability introduces significant challenges that must be addressed through advanced optimization techniques. Optimization of Sustainable Process Systems: Multiscale Models and Uncertainties connects optimization fundamentals with their applications in sustainable energy systems with a particular emphasis on the challenges posed by uncertainty.
Divided into two parts, the book first introduces the core mathematical frameworks and methods needed to model and optimize uncertain systems, including stochastic programming, robust optimization, reinforcement learning, and multiscale algorithms. The authors clearly explain these state-of-the-art tools with attention to both theory and computational practice. The second part shifts to applications, demonstrating how these techniques are applied in real-world contexts such as renewable-based hydrogen, methanol, and ammonia production; carbon capture; shale gas systems; biomass integration; and power system optimization. Throughout the text, the authors emphasize the integration of renewables with chemical industries while highlighting strategies to manage variability, strengthen supply chains, and improve system-wide efficiency.
Combining rigorous fundamentals with cutting-edge applications through a tutorial-style approach, Optimization of Sustainable Process Systems: Multiscale Models and Uncertainties:
- Provides the foundation and tools needed to design resilient, optimized, and sustainable energy systems.
- Addresses optimization methods under uncertainty tailored to energy and process systems
- Presents a unified treatment of stochastic programming, robust optimization, and reinforcement learning techniques
- Integrates renewable-based systems with chemical industry supply chain design and operation
- Addresses computational challenges in large-scale optimization of energy systems
Both a theoretical resource and a practical guide for applied problem-solving, Optimization of Sustainable Process Systems: Multiscale Models and Uncertainties is ideal for graduate-level courses in chemical engineering, process systems engineering, energy systems optimization, and operations research. It is also a valuable reference for industrial researchers, system modelers, and developers working on sustainable process design and energy transition strategies.
商品描述(中文翻譯)
系統性回顧透過多尺度建模與不確定性分析來優化可持續過程系統
全球追求淨零碳排放的目標使化學工程師和能源研究人員迫切需要設計既可持續又具韌性的系統。雖然太陽能和風能等可再生能源具有巨大的潛力,但其變異性帶來了必須通過先進優化技術來解決的重大挑戰。可持續過程系統的優化:多尺度模型與不確定性 將優化基礎與其在可持續能源系統中的應用相連接,特別強調不確定性所帶來的挑戰。
本書分為兩部分,首先介紹建模和優化不確定系統所需的核心數學框架和方法,包括隨機規劃、穩健優化、強化學習和多尺度算法。作者清楚地解釋這些最先進的工具,並關注理論與計算實踐。第二部分轉向應用,展示這些技術如何在現實世界中應用,例如基於可再生能源的氫氣、甲醇和氨的生產;碳捕集;頁岩氣系統;生物質整合;以及電力系統優化。在整個文本中,作者強調可再生能源與化學工業的整合,同時突顯管理變異性、加強供應鏈和提高系統整體效率的策略。
通過教學風格的方法結合嚴謹的基礎與前沿應用,可持續過程系統的優化:多尺度模型與不確定性:
- 提供設計韌性、優化和可持續能源系統所需的基礎和工具。
- 針對能源和過程系統的不確定性優化方法進行探討
- 統一處理隨機規劃、穩健優化和強化學習技術
- 將基於可再生能源的系統與化學工業供應鏈設計和運營整合
- 解決能源系統大規模優化中的計算挑戰
作為理論資源和實用問題解決指南,可持續過程系統的優化:多尺度模型與不確定性 非常適合化學工程、過程系統工程、能源系統優化和運籌學的研究生課程。它也是工業研究人員、系統建模者和從事可持續過程設計及能源轉型策略的開發者的寶貴參考資料。
作者簡介
Can Li, PhD, is an Assistant Professor in the Davidson School of Chemical Engineering at Purdue University. His research group focuses on optimization, machine learning, and applications to sustainable process systems. His research has been recognized by the NSF CAREER Award, ACS PRF Doctoral New Investigator Award, and the Amazon Research Award on Sustainability.
作者簡介(中文翻譯)
李博士(Can Li, PhD)是普渡大學(Purdue University)大衛森化學工程學院(Davidson School of Chemical Engineering)的助理教授。他的研究團隊專注於優化、機器學習及其在可持續過程系統中的應用。他的研究曾獲得美國國家科學基金會(NSF)CAREER獎、化學學會(ACS)PRF博士新研究者獎以及亞馬遜可持續性研究獎。