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基于机器学习的FPSO油气处理系统能耗预测

Energy consumption prediction of FPSO oil and gas treatment system based on machine learning

  • 摘要:
    目的 进一步提高浮式生产储卸油装置(floating production storage and offloading, FPSO)工艺系统能耗预测的准确率,避免出现设备供电不足或超压的现象。
    方法 ①以巴西海域某FPSO油气处理系统为研究对象,建立HYSYS工艺模拟模型;②基于模拟数据构建了贝叶斯算法优化XGBoost(BO-XGBoost)能耗预测模型,获得了优化后的决策树数量、最大深度、最小叶子节点权重和学习率;③结合沙普利加性解释(Shapley additive explanations, SHAP)分析手段,定量探究了各影响因素对整体能耗模型的贡献值和重要性,得到特征在全局范围内对模型表现的总体影响。
    结果 ①相较于反向传播神经网络(back propagation neural network, BP)、随机森林(random forest, RF)和标准XGBoost模型,改进模型的决定系数(R2)平均值分别提高了0.09、0.06和0.03,平均绝对百分比误差(mean absolute percentage error, MAPE)平均值分别降低了11个百分点、6个百分点和4个百分点,优化后模型的分析框架对能耗拟合精度更高;②系统中影响燃料气和回注气分配的阀门开度对结果的影响存在双向作用,较大的原油处理量会增加上部FPSO工艺模块的能耗;③不同油处理系统分配量的阀门开度、回注气与脱酸气体的阀门开度、入口压力、蒸气回收系统压缩机出口压力、脱水系统入口压力等变量的SHAP值分布范围较窄,对结果的推动或抑制作用均不突出,现场应根据其工况特点和燃料气用量合理分配阀门开度和压缩机入口压力。
    结论 通过精准识别影响FPSO油气处理系统能耗的关键因素并建立BO-XGBoost模型,可实现对工艺系统能耗的精确预测,从而有效解决FPSO设备供电不足或超压的现象,为海上FPSO的安全平稳运行提供保障,同时提升能效水平,降低运营成本。

     

    Abstract:
    Objective The aim is to enhance energy consumption prediction accuracy in floating production storage and offloading (FPSO) process systems and prevent equipment power shortages or overpressure incidents.
    Method Firstly, this study investigated an oil-gas processing system of a Brazilian offshore FPSO. A HYSYS process simulation model was developed. Secondly, a Bayesian-optimized XGBoost (BO-XGBoost) prediction model was constructed using simulation data, optimizing key parameters including decision tree quantity, maximum tree depth, minimum leaf node weight, and learning rate. Thirdly, Shapley additive explanations (SHAP) analysis was employed to quantitatively assess factors’ contributions and importance, and the overall influence of feature to model's performance in global range was obtained.
    Result Firstly, compared with back propagation neural network (BP), random forest (RF) and standard XGBoost models, the coefficient of determination (R2) of the BO-XGBoost model increased by an average of 0.09, 0.06, and 0.03, respectively; the mean value of mean absolute percentage error (MAPE) of the improved model was reduced by 11 percentage points, 6 percentage points, and 4 percentage points, respectively. The analysis framework of the optimized model had higher fitting accuracy for energy consumption. Secondly, valve openings affecting fuel/reinjection gas distribution showed bidirectional effects, while higher crude throughput increased energy consumption of upper FPSO process module. Thirdly, variables including oil treatment system allocation valves opening, reinjection gas and deacidification acid gas valves opening, inlet pressures, and vapor recovery system compressor outlet pressures, dehydration system inlet pressures exhibited limited influence (narrow SHAP distribution ranges), suggesting field operational adjustments should consider actual conditions and fuel gas consumption.
    Conclusion Identifying key energy consumption factors and establishing the BO-XGBoost model can achieve precise energy consumption prediction of process system, thereby effectively preventing power shortages/overpressure, ensuring safe FPSO operations, improving energy efficiency, and reducing operational costs.

     

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