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The abnormity control scheme for the thickening process of gold hydrometallurgy based on fuzzy Bayesian network

机译:基于模糊贝叶斯网络的金湿法冶金增厚过程异常控制方案

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This paper develops an abnormity control scheme based on fuzzy Bayesian network (BN) for the thickening process of gold hydrometallurgy. By analyzing the causes and corresponding solutions of the abnormity, the operator experience of removing the abnormity is transformed to construct the BN. The BN combines the expert knowledge with quantitative data analysis to make decisions and remove the abnormity. The BN is established off-line and used to infer on-line. Because the observable variables extracted from sensors are continuous in practical application, we use fuzzy set theory to discretize the continuous variables. After receiving abnormal phenomena as soft evidences, the posterior probabilities of the decision variables with different grades can be obtained by BN reasoning, which provide real-time safety analysis. The application results show that the proposed approach can make effective decisions for the abnormity in the thickening process.
机译:本文开发了基于模糊贝叶斯网络(BN)的异常控制方案,用于金氢膜的增厚过程。通过分析异常的原因和相应的解决方案,转化了去除异常的操作员经验以构建BN。 BN将专家知识与定量数据分析结合起来做出决策并消除异常。 BN被离线建立并用于在线推断。由于从传感器提取的可观察变量在实际应用中是连续的,所以我们使用模糊集合理论来离散连续变量。在接受异常现象作为软证据后,通过BN推理可以获得具有不同等级的决策变量的后验概率,这提供了实时安全性分析。申请结果表明,该方法可以对增稠过程中的异常做出有效的决定。

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