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Mathematical Model Based on BP Neural Network Algorithm for the Deflection Identification of Storage Tank and Calibration of Tank Capacity Chart

机译:基于BP神经网络算法的数学模型储罐偏转识别及罐容量图校准

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摘要

The tank capacity chart calibration problem of two oil tanks with deflection was studied, one of which is an elliptical cylinder storage tank with two truncated ends and another is a cylinder storage tank with two spherical crowns. Firstly, the function relation between oil reserve and oil height based on the integral method was precisely deduced, when the storage tank has longitudinal inclination but has no deflection. Secondly, the nonlinear optimization model which has both longitudinal inclination parameter α and lateral deflection parameter β was constructed, using cut-complement method and approximate treatment method. Then the deflection tank capacity chart calibration with a 10 cm oil level height interval was worked out. Lastly, the tank capacity chart was corrected by BP neural network algorithm and got proportional error of theoretical and experimental measurements ranges from 0% to 0.00015%. Experimental results demonstrated that the proposed method has better performance in terms of tank capacity chart calibration accuracy compared with other existing approaches and has a strongly practical significance.
机译:研究了两个带偏转的油箱的罐容量图校准问题,其中一个是具有两个截末端的椭圆缸储罐,另一个是具有两个球形冠的汽缸储罐。首先,当储罐具有纵向倾斜但没有偏转时,精确地推断了基于整体方法的油储物和油高度之间的功能关系。其次,使用剪切方法和近似处理方法构建具有纵向倾斜参数α和横向偏转参数β的非线性优化模型。然后制定了偏转罐容量图校准,校准了10厘米的油位高度间隔。最后,BP神经网络算法纠正了罐容量图,理论和实验测量的比例误差为0%至0.00015%。实验结果表明,与其他现有方法相比,该方法在罐容量图校准精度方面具有更好的性能,具有强烈实际的意义。

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