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A Comparative Study of Regression Model and the Adaptive Neuro-Fuzzy Conjecture Systems for Predicting Energy Consumption for Jaw Crusher

机译:回归模型和自适应神经模糊胶凝系统预测颌骨能耗的对比研究

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Crushing is a vital process for different industrial applications where a significant portion of power is consumed to properly blast rocks into a predefined size of fragmented rock. An accurate prediction of the energy needed to control this process rarely exists in the literature, hence there have been limited efforts to optimize the power consumption at the crushing stage by a jaw crusher; which is the most widely used type of crusher. The existence of accurate power prediction as well as optimizing the steps for primary crushing will offer vital tools in selecting a suitable crusher for a specific application. In this work, the specific power consumption of a jaw crusher is predicted with the help of the adaptive neuro-fuzzy interference system (ANFIS). The investigation included, aside from the power required for rock comminution, an optimization of the crushing process to reduce this estimated power. Results revealed the success of the model to accurately predict comminution power with an accuracy of more than 96% in comparison with the corresponding real data. The obtained results introduce good knowledge that may be used in future academic and industrial research.
机译:压碎是不同工业应用的重要过程,其中消耗大部分电力以将岩石妥善喷砂成预定尺寸的碎裂岩石。在文献中,对控制该过程所需的能量的精确预测很少存在,因此有限地努力通过颚式破碎机优化破碎阶段的功耗;这是最广泛使用的破碎机。准确功率预测的存在以及优化初级破碎步骤的步骤将提供重要的工具在为特定应用中选择合适的破碎机。在这项工作中,借助自适应神经模糊干扰系统(ANFIS)预测了颌骨破碎机的特定功耗。除了岩石粉碎所需的力量之外,还包括调查,优化破碎过程,以减少这种估计的功率。结果表明,与相应的实际数据相比,模型的成功准确地预测了粉碎功率,精度超过96%。获得的结果介绍了可在未来的学术和工业研究中使用的良好知识。

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