利用计算智能技术预测地下水库水位和能源消耗

Ali N. Hasan, Bhekisipho Twala, T. Marwala
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引用次数: 2

摘要

采用k近邻、naïve贝叶斯分类器和决策树三种计算智能算法,对某双泵站矿山的大坝水位和能耗进行了监测和预测。进行这项工作是为了检查在采矿业的某些方面使用计算智能的可行性。如果成功,计算智能系统可以提高安全性并减少电能消耗。结果表明,与决策树和naïve贝叶斯分类器技术相比,k近邻技术在预测地下坝水位和泵能耗方面更有效。
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Underground water dam levels and energy consumption prediction using computational intelligence techniques
Three computational intelligence algorithms (k-nearest neighbors, a naïve Bayes' classifier, and decision trees) were applied on a double pump station mine to monitor and predict the dam levels and energy consumption. This work was carried out to inspect the feasibility of using computational intelligence in certain aspects of the mining industry. If successful, computational intelligence systems could lead to improved safety and reduced electrical energy consumption. The results show k nearest neighbors' technique to be more efficient when compared with decision trees, and naïve Bayes' classifier techniques in terms of predicting underground dam levels and pumps energy consumption.
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