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Mechanistic-statistical concurrent modelling techniques

机译:力学统计并发建模技术

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摘要

Measurements involve the determination of physical quantities by experiment. In this endeavour, an experimental model will need to specify how measurement system is expected to respond to input data, which is the key to extracting information from the system. The quality of information depends directly on the quality of the model. With this concern novel techniques for model quality improvement have been fashioned. For attaining a high level of comprehensiveness, accuracy and precision, the exact unknown model was approximated simultaneously by available mechanistic and appropriate empirical functions. Adequate modelling was accomplished by employing theoretical and empirical data integration. Herewith, additive and multiplicative approaches were elaborated. The application of developed techniques for sensor model perfection has shown that concurrent multiplicative modelling, in comparison with pure statistical modelling, permits the attainment of less discrepancy in experimental evidence for the whole region of interest for model input variables.
机译:测量涉及通过实验确定物理量。为此,需要一个实验模型来指定期望测量系统如何响应输入数据,这是从系统中提取信息的关键。信息的质量直接取决于模型的质量。出于这种考虑,已经开发了用于模型质量改善的新技术。为了获得高水平的全面性,准确性和精确性,可以通过可用的机理和适当的经验函数同时近似精确的未知模型。通过采用理论和经验数据集成来完成适当的建模。因此,阐述了加法和乘法方法。传感器模型完善的发达技术的应用表明,与纯统计模型相比,并发乘法模型与模型输入变量整个感兴趣区域的实验证据差异较小。

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