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特大型浮选机在乌山铜钼矿的应用与系统优化 被引量:3
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作者 洪保磊 杨世亮 +2 位作者 王越 陆长龙 李红新 《有色金属(选矿部分)》 CAS 北大核心 2016年第6期72-75,共4页
依据乌山铜钼矿的矿石性质、建设规模、工艺流程特点选择高效节能的浮选设备,特别是在乌山一期首次成功应用160 m3浮选机基础之上,对二期320 m3特大型浮选机以及浮选系统进行全面优化设计,对中矿泵选型计算、配置等情况进行了深入研究,... 依据乌山铜钼矿的矿石性质、建设规模、工艺流程特点选择高效节能的浮选设备,特别是在乌山一期首次成功应用160 m3浮选机基础之上,对二期320 m3特大型浮选机以及浮选系统进行全面优化设计,对中矿泵选型计算、配置等情况进行了深入研究,对工艺配置进行了创新设计,成功地解决了浮选机运行中出现的问题。这些改进措施保证了浮选系统运行的稳定,取得了理想的效果。 展开更多
关键词 特大型浮选机 设备选型 工艺设计 浮选系统优化 生产实践
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Optimizing control of coal flotation by neuro-immune algorithm 被引量:3
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作者 Yang Xiaoping Chris Aldrich 《International Journal of Mining Science and Technology》 SCIE EI 2013年第3期407-413,共7页
Coal flotation is widely used to separate commercially valuable coal from the fine ore slurry, and is an industrial process with nonlinear, multivariable, time-varying and long time-delay characteristics. The online d... Coal flotation is widely used to separate commercially valuable coal from the fine ore slurry, and is an industrial process with nonlinear, multivariable, time-varying and long time-delay characteristics. The online detection of ash content of products as the operation performance evaluation in the flotation system is extraordinarily difficult because of the low solid content and numerous micro-bubbles in the slurry. Moreover, it is time-consuming by manual analysis. Consequently, the optimal separation is not usually maintained. A novel technique, called the neuro-immune algorithm (NIA) inspired by the biological nervous and immune systems, is presented in this paper for predicting the ash content of clean coal and performing the optimizing control to the coal flotation system. The proposed algorithm integrates the deeply-studied artificial neural network (ANN) and the developing artificial immune system (AIS). A two-layer back-propagation network was constructed offline based on the historical process data under the best system situation, using five parameters: the flow and the density of raw slurry, the input flows of water, the kerosene and the GF oil, as the inputs and the ash content of clean coal as the output. The immune cell of AIS is made up of six parameters above as the antigen. The cytokine based clone selection algorithm is used to produce the relative antibody. The detailed computation procedures about the hybrid neuro-immune algorithm are minutely discussed. The ash content of clean coal was predicted by NIA using the practical process data s: (308.6 174.7 146.1 43.6 4.0 9.4), and the absolute difference between the actual and computed ash content values was 0.0967%. The optimizing control on NIA was simulated considering two different situations where the ash content of clean coal was controlled downward from 10.00% or upward from 9.20% predicted by ANN to the target value 9.50%. The results indicate that the target ash content and the value of controlling parameters are obtained after several co 展开更多
关键词 optimizing control Neuro-immune algorithm Neural networks Immune system Coal flotation
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