CALIBRATION OF ONLINE ANALYZERS USING NEURAL NETWORKS

Mining engineering Pub Date : 2003-12-05 DOI:10.2172/823299
R. Ganguli, D. Walsh, Shaohai Yu
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引用次数: 4

Abstract

Neural networks were used to calibrate an online ash analyzer at the Usibelli Coal Mine, Healy, Alaska, by relating the Americium and Cesium counts to the ash content. A total of 104 samples were collected from the mine, with 47 being from screened coal, and the rest being from unscreened coal. Each sample corresponded to 20 seconds of coal on the running conveyor belt. Neural network modeling used the quick stop training procedure. Therefore, the samples were split into training, calibration and prediction subsets. Special techniques, using genetic algorithms, were developed to representatively split the sample into the three subsets. Two separate approaches were tried. In one approach, the screened and unscreened coal was modeled separately. In another, a single model was developed for the entire dataset. No advantage was seen from modeling the two subsets separately. The neural network method performed very well on average but not individually, i.e. though each prediction was unreliable, the average of a few predictions was close to the true average. Thus, the method demonstrated that the analyzers were accurate at 2-3 minutes intervals (average of 6-9 samples), but not at 20 seconds (each prediction).
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使用神经网络校准在线分析仪
神经网络被用于校准阿拉斯加希利Usibelli煤矿的在线灰分分析仪,通过将镅和铯的计数与灰分含量联系起来。矿井共采集样品104份,其中筛煤47份,未筛煤47份。每个样品对应运行中的传送带上20秒的煤。采用神经网络建模的快速停止训练程序。因此,将样本分为训练子集、校准子集和预测子集。使用遗传算法的特殊技术被开发出来,以代表性地将样本分成三个子集。他们尝试了两种不同的方法。在一种方法中,筛选和未筛选的煤分别建模。在另一种情况下,为整个数据集开发了一个模型。单独对两个子集建模没有任何好处。神经网络方法在平均情况下表现得很好,但在个别情况下表现得不好,即尽管每个预测都不可靠,但少数预测的平均值接近真实平均值。因此,该方法表明,分析仪在2-3分钟的间隔(平均6-9个样本)是准确的,但在20秒(每次预测)不准确。
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