Artificial Neural Networks and Type-2 Fuzzy Set: Elements of Soft Computing and Its Applications
暫譯: 人工神經網路與二型模糊集:軟體計算的元素及其應用
Chakraverty, Snehashish, Sahoo, Arup Kumar, Mohapatra, Dhabaleswar
- 出版商: Morgan Kaufmann
- 出版日期: 2025-05-22
- 售價: $5,880
- 貴賓價: 9.5 折 $5,586
- 語言: 英文
- 頁數: 256
- 裝訂: Quality Paper - also called trade paper
- ISBN: 0443328943
- ISBN-13: 9780443328947
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商品描述
Soft computing is an emerging discipline which aims to exploit tolerance for imprecision, approximate reasoning, and uncertainty to achieve robustness, tractability, and cost effectiveness for building intelligent machines. Soft computing methodologies include neural networks, fuzzy sets, genetic algorithms, Bayesian networks, and rough sets, among others. In this regard, neural networks are widely used for modeling dynamic solvers, classification of data, and prediction of solutions, whereas fuzzy sets provide a natural framework for dealing with uncertainty. Artificial Neural Networks and Type-2 Fuzzy Set: Elements of Soft Computing and Its Applications covers the fundamental concepts and the latest research on variants of Artificial Neural Networks (ANN), including scientific machine learning and Type-2 Fuzzy Set (T2FS). In addition, the book also covers different applications for solving real-world problems along with various examples and case studies. It may be noted that quite a bit of research has been done on ANN and Fuzzy Set theory/ Fuzzy logic. However, Artificial Neural Networks and Type-2 Fuzzy Set is the first book to cover the use of ANN and fuzzy set theory with regards to Type-2 Fuzzy Set in static and dynamic problems in one place. Artificial Neural Networks and Type-2 Fuzzy Sets are two of the most widely used computational intelligence techniques for solving complex problems in various domains. Both ANN and T2FS have unique characteristics that make them suitable for different types of problems. This book provides the reader with in-depth understanding of how to apply these computational intelligence techniques in various fields of science and engineering in general and static and dynamic problems in particular. Further, for validation purposes of the ANN and fuzzy models, the obtained solutions of each model in the book is compared with already existing solutions that have been obtained with numerical or analytical methods.
商品描述(中文翻譯)
軟計算是一個新興的學科,旨在利用對不精確性、近似推理和不確定性的容忍,以實現構建智能機器的穩健性、可處理性和成本效益。軟計算方法論包括神經網絡、模糊集合、遺傳算法、貝葉斯網絡和粗集合等。在這方面,神經網絡被廣泛用於建模動態求解器、數據分類和解決方案預測,而模糊集合則提供了一個自然的框架來處理不確定性。《人工神經網絡與二型模糊集合:軟計算的元素及其應用》涵蓋了人工神經網絡(ANN)變體的基本概念和最新研究,包括科學機器學習和二型模糊集合(T2FS)。此外,本書還涵蓋了解決現實世界問題的不同應用,並提供了各種示例和案例研究。值得注意的是,關於ANN和模糊集合理論/模糊邏輯的研究已經進行了相當多的工作。然而,《人工神經網絡與二型模糊集合》是第一本在一個地方涵蓋ANN和模糊集合理論在靜態和動態問題中與二型模糊集合相關的使用的書籍。人工神經網絡和二型模糊集合是解決各個領域複雜問題的兩種最廣泛使用的計算智能技術。ANN和T2FS各自具有獨特的特性,使其適合不同類型的問題。本書為讀者提供了深入了解如何在科學和工程的各個領域,特別是在靜態和動態問題中應用這些計算智能技術的知識。此外,為了驗證ANN和模糊模型的有效性,本書中每個模型所獲得的解決方案與已經通過數值或解析方法獲得的現有解決方案進行了比較。