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Fuzzy Parameters and Cutting Forces Optimization via Genetic Algorithm Approach

机译:通过遗传算法方法的模糊参数和切割力优化

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The classification of solved signal features for manufacturing process condition monitoring has been carried out using fuzzy parameters optimization processing. In cases where assumptions in respect of nonlinear behavior cannot be made, the need to describe mathematically, ever increasing complexity become difficult and perhaps infeasible. The optimization possibilities of the fuzzy system parameters using genetic algorithms are studied. An analytical function determines the positions of the output fuzzy sets in each mapping process, that substitute the fuzzy rule base used in conventional approach. We realize case adaptation by adjusting the fuzzy sets parameters. Fuzzy parameters within optimization procedure could be multiobjective. We solve also the system for cutting process simulation, which contains the experimental model and the simulation model based on genetic algorithms. There is developed a genetic algorithm based simulation procedure for the prediction of the cutting forces. These genetic algorithms methodologies are suitable for fuzzy implementation control and for solution of large-scale problems.
机译:已经使用模糊参数优化处理执行了用于制造工艺条件监测的解决信号特征的分类。在无法使非线性行为的假设不能进行的情况下,需要数学上描述的需要,越来越多的复杂性变得困难,也许不可行。研究了使用遗传算法的模糊系统参数的优化可能性。分析功能确定每个映射过程中的输出模糊集的位置,该映射过程中替代传统方法中使用的模糊规则基础。我们通过调整模糊集参数来实现案例适应。优化过程中的模糊参数可能是多目标。我们还解决了切割过程模拟的系统,该系统包含基于遗传算法的实验模型和仿真模型。开发了一种基于遗传算法的基于仿真程序,用于预测切割力。这些遗传算法方法适用于模糊实现控制和大规模问题的解决方案。

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