基于自适应粒子群算法的配煤结构化模型研究

    Study on structured coal blending model based on adaptive particle swarm optimization algorithm

    • 摘要: 为构建高效、低成本且适应性强的配煤方案,解决传统配煤方案依赖人工经验、计算复杂、结果稳定性差等问题,提出一种基于自适应粒子群算法的配煤结构化模型。研究以磁西煤田七个矿区不同牌号煤种为样本,首先对混煤的各煤质指标(灰分、水分、挥发分、硫分、黏结指数)进行实测,分析传统线性加权模型的预测误差;对灰分、挥发分和硫分指标采用线性预测模型进行预测;针对黏结指数的非线性特征,引入支持向量机原理,构建含高斯函数项的非线性预测模型。随后,建立以成本最低、优质煤配比最小、劣质煤配比最大为目标的多约束配煤结构化模型,并采用遗传算法(GA)、粒子群算法(PSO1)及自适应粒子群算法(PSO2)进行求解优化,并改进学习因子和惯性权重的动态调整策略。结果表明: 灰分、挥发分及硫分可通过线性预测模型有效预测(R2值接近0.9),黏结指数的非线性预测模型R2值达0.927,显著优于传统加权公式; 在模型求解中,PSO2算法相较于GA和PSO1,预测误差更小,配煤成本最低,为1502.80元;且迭代过程稳定性更高,20代后性能基本稳定。构建的基于自适应粒子群算法的配煤结构化模型,能有效实现混煤煤质指标的高精度预测及配比方案的快速优化,可为煤炭的清洁高效利用提供技术支撑,具备良好的工程应用价值。

       

      Abstract: In order to construct an efficient, low-cost and highly adaptable coal blending solution that tackles the problems of traditional methods such as reliance on artificial experience, computational complexity, and poor result stability, a structured coal blending model based on adaptive particle swarm optimization algorithm is proposed. This study takes coal samples of different grades from seven mining areas in the Cixi Coalfield. First, the coal quality indicators of blended coal—including ash content, moisture content, volatile matter, sulfur content, and caking index—are experimentally measured to analyze prediction errors in the traditional linear weighting model. For the indices of ash content, volatile matter and sulfur content, a linear prediction model is used for prediction; aiming at the nonlinear characteristics of the caking index, the principle of support vector machine is introduced to construct a nonlinear prediction model containing Gaussian function terms. Subsequently, a multi-constraint coal blending structural model is established with the objectives of minimizing costs, minimizing high-quality coal ratio, and maximizing low-quality coal ratio, Genetic Algorithm (GA), Particle Swarm Optimization (PSO1), and Adaptive Particle Swarm Optimization (PSO2) are used for solution optimization, with a focus on improving the dynamic adjustment strategies of learning factors and inertia weights. The results show that: ash content, volatile matter, and sulfur content can be effectively predicted by the linear prediction model (R2 values close to 0.9). The R2 value of the nonlinear prediction model for the caking index reaches 0.927, significantly better than traditional weighted formula. In model solutions, the PSO2 algorithm demonstrates superior performance compared to GA and PSO1, exhibiting reduced prediction errors and achieving the lowest coal blending cost of 1502.80 yuan. Furthermore, the iterative process of PSO2 is more stable, with performance essentially stabilizing after 20 generations. The structured coal blending model based on adaptive particle swarm optimization algorithm can effectively achieve high-precision prediction of blended coal quality indicators and rapid optimization of blending schemes. It can provide technical support for the clean and efficient utilization of coal and has good engineering application value.

       

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