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首页> 外文期刊>Transactions of the Institute of Measurement and Control >Soft sensor for the moisture content of crude oil based on multi-kernel Gaussian process regression optimized by an adaptive variable population fruit fly optimization algorithm
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Soft sensor for the moisture content of crude oil based on multi-kernel Gaussian process regression optimized by an adaptive variable population fruit fly optimization algorithm

机译:基于多核高斯工艺回归的原油含量的软传感器通过自适应可变群果蝇优化算法优化

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摘要

In the practical oilfield production, it has great significance to realize timely and accurate measurement of the moisture content of crude oil. However, there are some drawbacks in the traditional measurement methods, such as: non-real time, high cost, labor-consume, vulnerability to environmental impacts, and so on. In order to solve these problems, a soft sensor model based on multi-kernel Gaussian process regression optimized by an adaptive variable population fruit fly optimization algorithm (APFOA-MKGPR) is presented in this paper. A multiple kernels-based Gaussian process regression method is utilized to deal with the practical production process characterised by multiple operating phases, noises, strong nonlinearity and dynamic. In the multi-kernel function, many parameters (five hyper-parameters in the multi-kernel function and three weights of each kernel function) need to be accurately given, which is difficult to be effectively optimized by the maximum likelihood estimation. So, a swarm intelligence-based adaptive variable population fruit fly optimization algorithm (APFOA) is proposed to train the best model parameters. A novel adaptive variable population mechanism is developed to adaptively adjust the population size and the random flight distance during the iterations, which can realize a combination of the global searching and the local searching for the optimal solutions. The proposed method is verified by four benchmark functions and the actual production data of one oil well, and experimental results show the effectiveness for accurate prediction of the moisture content of crude oil.
机译:在实际油田生产中,它具有重要意义,实现了原油的水分含量的及时准确测量。然而,传统的测量方法中存在一些缺点,例如:非实时,高成本,劳动力消耗,对环境影响的脆弱性,等等。为了解决这些问题,本文提出了一种基于自适应变量普通果蝇优化算法(APFOA-MKGPR)优化的多核高斯进程回归的软传感器模型。基于多个内核的高斯工艺回归方法用于处理特征的实际生产过程,其特征是多个操作阶段,噪声,强非线性和动态的。在多核函数中,需要准确地给出许多参数(多核函数中的五个超级参数和每个内核功能的三个权重),这很难通过最大似然估计有效地优化。因此,提出了一种基于群体的基于智能的自适应变量普通飞行优化算法(APFOA)以培训最佳模型参数。开发了一种新颖的自适应可变群体机制,以便在迭代期间自适应地调整人口大小和随机飞行距离,这可以实现全局搜索和本地搜索最佳解决方案的组合。所提出的方法通过四个基准功能和一个油井的实际生产数据验证,实验结果表明了准确预测原油水分含量的有效性。

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