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Sparse Sample Regression Based Just-In-Time Modeling (SSR-JIT): Beyond Locally Weighted Approach * * This study was supported by JSPS KAKENHI 15K06554.

机译:基于稀疏样本回归的即时建模(SSR-JIT):超越局部加权方法 * * 这项研究得到了JSPS KAKENHI 15K06554的支持。

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In the present work, a new method for just-in-time (JIT) modeling is proposed. To develop virtual sensors or soft-sensors that can cope with changes in process characteristics as well as nonlinearity, JIT modeling such as locally weighted regression (LWR) and locally weighted partial least squares (LW-PLS) has been investigated and successfully used in various industries. The conventional JIT modeling methods predict output variables by constructing a local model by using past samples located in the neighborhood around the new target sample (query) every time when the output prediction is required; the modeling samples are selected or weighted according to the similarity between the samples and the query. The similarity is usually determined on the basis of the distance from the query. However, the use of distance does not assure the high prediction accuracy. To overcome this limitation of the conventional JIT methods, the proposed method selects past samples that are useful for constructing an accurate local model by using elastic net, which builds a sparse regression model to estimate the query, and uses the derived regression coefficients to evaluate the similarity for conducting LW-PLS. This sparse sample regression based just-in-time modeling (SSR-JIT) has a potential for surpassing the conventional distance-based JIT modeling. In fact, it was demonstrated that SSR-JIT outperformed LW-PLS in the prediction accuracy through two case studies with real industrial data.
机译:在当前的工作中,提出了一种新的即时(JIT)建模方法。为了开发能够应对过程特性以及非线性变化的虚拟传感器或软传感器,已经研究了JIT模型,例如局部加权回归(LWR)和局部加权偏最小二乘(LW-PLS),并已成功用于各种环境中行业。常规的JIT建模方法是在每次需要输出预测时,通过使用位于新目标样本(查询)周围的邻域中的过去样本来构建局部模型来预测输出变量。根据样本与查询之间的相似度选择或加权建模样本。通常基于与查询的距离来确定相似性。但是,距离的使用不能确保较高的预测精度。为了克服传统JIT方法的这种局限性,该方法选择了过去的样本,这些样本对于使用弹性网构建准确的局部模型很有用,它会建立一个稀疏的回归模型来估计查询,并使用派生的回归系数来评估LW-PLS的相似性。这种基于稀疏样本回归的实时建模(SSR-JIT)有可能超越传统的基于距离的JIT建模。实际上,通过两个具有实际工业数据的案例研究,证明了SSR-JIT在预测准确性上优于LW-PLS。

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