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Deterministic Numeric Simulation and Surrogate Models with White and Black Machine Learning Methods: A Case Study on Direct Mappings

机译:白色和黑色机器学习方法的确定性数字仿真和代理模型:直接映射案例研究

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The approximation and emulation of first principles based deterministic models are important problems in many disciplines, like physical and natural sciences, as well as in engineering (industrial design, creation of digital twins and other tasks). Typically they involve complex systems, described by partial differential or integral equations which must be solved for a variety of space and time boundary conditions. Finding these solutions is usually costly in terms of both computational resources and time. Surrogate models are an effective way of building approximations that may replace the use of the compled/costly original models, expediting and speeding operations. Computational intelligence techniques have proven suitable for surrogating purposes and this paper explores the characterization of a relatively simple deterministic system described by a partial differential equation, using white as well as black box approaches for direct supervised mappings (inverse mappings are explored elsewhere). In addition, unsupervised methods are used for gaining insight into the properties of the input and output state spaces. White-box ML techniques exposed the nature of the inter-dependencies and the importance of the predictor variables. Individually, support vector regression outperformed all other models for the fixed-location, fixed time and also for the fixedlocation, time dependent scenario. However, performance-wise, the ensemble composed of white-box techniques outperformed the one integrated by black-box methods from the point of view of error and correlation measures.
机译:基于第一个原则的确定性模型的近似和仿真是许多学科的重要问题,如物理和自然科学,以及工程(工业设计,数字双胞胎和其他任务创建)。通常,它们涉及复杂的系统,该系统由部分差分或整体方程描述,其必须求解各种空间和时间边界条件。找到这些解决方案通常在计算资源和时间方面的昂贵。代理模型是建筑近似的有效方式,这些近似可能取代补偿/昂贵的原始模型,加速和超速运营。计算智能技术已经证明适于代价目的,本文探讨了使用白色的局部微分方程描述的相对简单的确定性系统的表征,以及用于直接监督映射的黑匣子方法(在其他地方探讨了逆映射)。此外,无监督的方法用于获得对输入和输出状态空间的属性的洞察。 White-Box ML技术暴露了依赖性间的性质和预测变量的重要性。单独地,支持向量回归优于固定位置,固定时间和固定位置,时间相关方案的所有其他模型。但是,性能方面,由白盒技术组成的集合从错误和相关措施的角度来看,由白盒技术组成。

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