Fusion of soft computing and hard computing in industrial applications: an overview

S. Ovaska, H. Vanlandingham, A. Kamiya
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引用次数: 62

Abstract

Soft computing (SC) is an emerging collection of methodologies which aims to exploit tolerance for imprecision, uncertainty, and partial truth to achieve robustness, tractability, and low total cost. It differs from conventional hard computing (HC) in the sense that, unlike hard computing, it is strongly based on intuition or subjectivity. Therefore, soft computing provides an attractive opportunity to represent the ambiguity in human thinking with real life uncertainty. Fuzzy logic (FL), neural networks (NN), and genetic algorithms (GA) are the core methodologies of soft computing. However, FL, NN, and GA should not be viewed as competing with each other, but synergistic and complementary instead. Considering the number of available journal and conference papers on various combinations of these three methods, it is easy to conclude that the fusion of individual soft computing methodologies has already been advantageous in numerous applications. On the other hand, hard computing solutions are usually more straightforward to analyze; their behavior and stability are more predictable; and, the computational burden of algorithms is typically either low or moderate. These characteristics. are particularly important in real-time applications. Thus, it is natural to see SC and HC as potentially complementary methodologies. Novel combinations of different methods are needed when developing high-performance, cost-effective, and safe products for the demanding global market. We present an overview of applications in which the fusion of soft computing and hard computing has provided innovative solutions for challenging real-world problems. A carefully selected list of references is considered with evaluative discussions and conclusions.
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工业应用中软计算与硬计算的融合:综述
软计算(SC)是一种新兴的方法集合,旨在利用对不精确、不确定性和部分真值的容忍度来实现鲁棒性、可追溯性和低总成本。它与传统的硬计算(HC)的不同之处在于,与硬计算不同,它强烈地基于直觉或主观性。因此,软计算提供了一个有吸引力的机会,可以用现实生活中的不确定性来表示人类思维中的模糊性。模糊逻辑(FL)、神经网络(NN)和遗传算法(GA)是软计算的核心方法。然而,FL、NN和GA不应被视为相互竞争,而是协同互补。考虑到关于这三种方法的各种组合的可用期刊和会议论文的数量,很容易得出结论,单个软计算方法的融合已经在许多应用中具有优势。另一方面,硬计算解决方案通常更易于分析;它们的行为和稳定性更容易预测;而且,算法的计算负担通常是低或中等的。这些特征。在实时应用程序中尤为重要。因此,将SC和HC视为潜在的互补方法是很自然的。在为要求苛刻的全球市场开发高性能、低成本和安全的产品时,需要不同方法的新颖组合。我们概述了软计算和硬计算的融合为具有挑战性的现实问题提供创新解决方案的应用。通过评价性讨论和结论审议精心挑选的参考文献清单。
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