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沃新书屋 -
VLSI-compatible Implementations for Artificial Neural Networks -
作者:Fakhraie, Sied Mehdi; Smith, Kenneth C.;
Fakhraie, Sied Mehdi; Smith, Kenneth C.;
人物简介:
VLSI-compatible Implementations for Artificial Neural Networks书籍相关信息
- ISBN:9780792398257
- 作者:Fakhraie, Sied Mehdi; Smith, Kenneth C.;
- 出版社:暂无出版社
- 出版时间:1996-12
- 页数:223
- 价格:$ 224.87
- 纸张:暂无纸张
- 装帧:暂无装帧
- 开本:暂无开本
- 语言:暂无语言
- 适合人群:Electronics engineers, Computer architects, Machine learning researchers, AI enthusiasts, Computer science students, Professionals in the field of artificial intelligence, Researchers in neural network design
- TAG:Machine Learning / Electronics / Computer Architecture / Artificial Intelligence / Neural Networks / VLSI / Microelectronics
- 豆瓣评分:暂无豆瓣评分
- 更新时间:2025-05-16 21:26:49
内容简介:
VLSI-Compatible Implementations for Artificial Neural Networks introduces the basic premise of the authors' approach to biologically-inspired and VLSI-compatible definition, simulation, and implementation of artificial neural networks. In addition, the book develops a set of guidelines for general hardware implementation of ANNs. These guidelines are then used to find solutions for the usual difficulties encountered in any potential work, and as guidelines by which to reach the best compromise when several options exist. Furthermore, system-level consequences of using the proposed techniques in future submicron technologies with almost-linear MOS devices are discussed. While the major emphasis in this book is to develop neural networks optimized for compatibility with their implementation media, the work has also been extended to the design and implementation of a fully-quadratic ANN based on the desire to have network definitions epitomized for both efficient discrimination of closed-boundary circular areas and ease of implementation in a CMOS technology. VLSI-Compatible Implementations for Artificial Neural Networks implements a comprehensive approach which starts with an analytical evaluation of specific artificial networks. This provides a clear geometrical interpretation of the behavior of different variants of these networks. In combination with the guidelines developed towards a better final implementation, these concepts have allowed the authors to conquer various problems encountered and to make effective compromises. Then, to facilitate the investigation of the models needed when more difficult problems must be faced, a custom simulating program for various cases is developed. Finally, in order to demonstrate the authors' findings and expectations, several VLSI integrated circuits have been designed, fabricated, and tested. VLSI-Compatible Implementations for Artificial Neural Networksm> serves as an excellent reference source and may be used as a text for advanced courses on the subject.