首页> 外文会议>International joint conference on rough sets >Toward Optimization of Reasoning Using Generalized Fuzzy Petri Nets
【24h】

Toward Optimization of Reasoning Using Generalized Fuzzy Petri Nets

机译:基于广义模糊Petri网的推理优化

获取原文

摘要

Recently, generalized fuzzy Petri nets have been proposed. This paper describes a modified class of generalized fuzzy Petri nets called optimized generalized fuzzy Petri nets. The main difference between the current net model and the previous one is the definition of the operator binding function δ. This function, like in the previous net model, combines transitions with triples of operators (In,Out_1,Out_2) in the form of appropriate triangular norms. The operator In refers to the way in which all input places are connected to a given transition (or more precisely, the statements corresponding to these places) and affects the aggregation power of truth degrees associated with the input places of the transition. However, the operators Out_1 and Out_2 refer to the way in which the new markings of output places of the transition are calculated after firing the transaction. For the operator In, it is assumed that it can belong to one of two classes, i.e., t or s-norms, while the operator Out_1 belongs to the class of t-norms, and the operator Out_2 to the class of s-norms. The meaning of these three operators in the current net model is the same as in the previous one. However, the new net model has been extended to include external knowledge about the partial order between the triangle norms used in the model. In addition, it is assumed that the new net model works in the steps mode. The paper also shows how to use this net model in the fuzzy reasoning algorithm. The tangible benefit of this approach compared to the previous one lies in the fact that the user can now more precisely adapt his model to the real life situation and use it more effectively by choosing the appropriate triples of operators for net transitions. This paper also presents an example of a small rule-based decision support system in the field of control, illustrating the described approach.
机译:最近,已经提出了广义模糊培养网。本文介绍了一种被称为优化的广义模糊Petri网的改进的广义模糊Petri网。当前网络模型和前一个的主要区别是操作员绑定功能δ的定义。类似于在以前的网络模型中,这种功能将转换与适当三角标准的形式与运算符(out_1,OUT_2)的三元组相结合。操作员在指所有输入位置连接到给定转换的方式(或更精确地,对应于这些位置的语句),并影响与转换的输入位置相关联的真理度的聚合功率。但是,运营商OUT_1和OUT_2指的是在触发事务后计算转换的输出位置的新标记的方式。对于操作员,假设它可以属于两个类,即T或S-nums中的一个,而运算符Out_1属于T-Remars类,以及运算符OUT_2到S-NURM类的类别。当前净模型中这三个运算符的含义与前一个净模型相同。但是,新的净模型已经扩展到包括模型中使用的三角形规范之间的部分顺序的外部知识。此外,假设新的网络模型在步骤模式下工作。本文还展示了如何在模糊推理算法中使用该净模型。与前一个人相比,这种方法的有形益处在于用户现在可以更精确地调整他的模型来实现他的模型,并通过选择适当的净转换的操作员更有效地使用它。本文还提出了在控制领域中的基于小规则的决策支持系统的示例,示出了所描述的方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号