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Detection of subtle sensor errors in mineral-processing circuits using data-mining techniques

机译:使用数据采矿技术检测矿化处理电路中的微妙传感器误差

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摘要

The economics of a mineral-processing circuit is dependent on the numerous sensors that are critical to optimization and control systems. When a sensor goes off calibration, it results in errors that can have a severe impact on plant economics. Classical statistical approaches fail to detect when errors are "subtle," unless they grow and become large enough to be "gross," whereas methods based on signal processing and artificial intelligence fail in dealing with the complexity of process fluctuations. Due to the sheer volume of sensors, undetected errors are not remedied until the next calibration, which on average are a year apart across all industries [1]. This research aims to detect such subtle errors (2 percent bias) in shorter time spans of about a month - rather than wait for errors to grow -using innovative data-mining techniques and algorithms.
机译:矿物处理电路的经济性取决于许多对优化和控制系统至关重要的传感器。 当传感器熄灭校准时,它会导致对植物经济学产生严重影响的误差。 古典统计方法未能检测误差何时“微妙”,除非它们生长并变得足够大,以“总计”,而基于信号处理和人工智能的方法则在处理流程波动的复杂性时失败。 由于传感器的庞大量,直到下一个校准,未经检测的错误不会纠正,平均跨越所有行业的一年[1]。 该研究旨在在大约一个月的时间跨越较短的时间跨度(而不是等待创新的数据挖掘技术和算法的时间跨越误差,而不是等待错误的误差(2%偏见)。

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