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Fuzzy logic for priority based genetic search in evolving a neural network architecture

机译:基于优先级的基于遗传搜索的模糊逻辑在演变神经网络架构

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In neural network optimization, multiple goals and constraints cannot be handled independently of the underlying optimizer. While “better ” solutions should be rated higher than “worse” ones, the resulting cost landscapes must also comply with requirements such as continuity and differentiability of the cost surface. The genetic algorithm (GA), which has found application in many areas not amenable to optimization by other methods, is a random search technique which requires the assignment of a scalar measure of quality, or fitness assignment be interpreted as, or at least related to, a multicriterion decision process. A suitable decision-making framework, based on goals and priority, is subsequently formulated in term of fuzzy reasoning and shown to encompass a number of simpler decision strategies. Since the GA is a random search process and therefore takes more time to find a solution in the problem domain, a proper search direction is required in order to produce an optimum result. Fuzzy logic cannot provide an exact solution but can be used as a useful tool for reasoning. In this paper, the reasoning capability of fuzzy logic is used to provide a proper direction for genetic search in a problem domain and thus to achieve faster convergence in the GA. The effectiveness of this is shown in neural network optimization applied to dynamic modelling of an experimental flexible manipulator. The results show that the new fuzzy logic approach is superior to conventional exploration of the genetic search region.
机译:在神经网络优化中,无法独立于底层优化器处理多个目标和约束。虽然“更好”的解决方案应额定高于“更差”的解决方案,但由此产生的成本景观也必须符合成本表面的连续性和可差异等要求。遗传算法(GA),已发现在许多方面不适合通过其他方法优化的应用程序,是一种随机搜索技术,它需要的品质,或适应值分配的标量指标的分配被解释为,或至少与,多轨道决策过程。基于目标和优先级的合适决策框架随后在模糊推理期间制定,并显示为包含许多更简单的决策策略。由于GA是随机搜索过程,因此需要更多时间来找到问题域中的解决方案,因此需要适当的搜索方向以产生最佳结果。模糊逻辑不能提供精确的解决方案,但可以用作推理的有用工具。在本文中,模糊逻辑的推理能力用于在问题域中提供遗传搜索的适当方向,从而在GA中实现更快的收敛。其有效性在应用于实验柔性机械手的动态建模的神经网络优化中示出。结果表明,新的模糊逻辑方法优于遗传搜索区域的传统探索。

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