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NUMERICAL DIFFERENTIATION IN THE MEASUREMENT MODEL

机译:测量模型中的数值分化

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The problems of increasing the accuracy of numerical differentiation in the measurement model are investigated. We consider the measurements of target characteristics of an object that are not directly measurable, and also the reduction of measurements using the example of determining derivatives and initial parameters in the Cauchy problem. We clarify the relationship between the initial parameters of the differential dependencies and particular solutions of the differential equation of the Cauchy problem at the measurement points of the input quantities of the measurement model. Using the example of determining the derivatives in the Cauchy problem, we note the efficiency of the Lagrangian approximation of the functions of the input and output quantities of the measurement model. It is shown that the maximum accuracy of the approximation of the studied characteristics of the object is attainable using the theory of inverse problems. The following scientific results were obtained: assuming the form of the differential equation for the Cauchy problem, particular solutions of the equation are found; using a polynomial approximation, we compute the function of the measurement model input parameters measured by the sensors; we derive formulas for computing the derivatives of the function of input quantities; by the method of measurement reduction, an approximation grid is determined that minimizes the influence of sensor error. We propose a criterion for estimating the efficiency of solving the measurement reduction problem. Formulas are obtained for estimating the level of error in the derivatives of the function of the input quantities, taking into account the given sensor error. It was shown that the experimental results are consistent with the theoretical ones. The applications for the research results include information-measuring systems for monitoring the status of complex technical objects.
机译:研究了提高测量模型中数值分化精度的问题。我们考虑使用直接可测量的物体的目标特征的测量,以及使用Cauchy问题中的确定衍生物和初始参数的示例减少测量。我们在测量模型的输入量的测量点处阐明差分依赖性校正依赖性和差分方程的差分方程的初始参数的关系。使用确定衍生物在Cauchy问题中的衍生物的例子,我们注意了Lagrangian近似值的测量模型的输入和输出量的功能的效率。结果表明,使用逆问题理论可以实现对象的研究特征的近似的最大精度。获得了以下科学结果:假设Cauchy问题的微分方程的形式,发现了方程的特定解决方案;使用多项式近似,我们计算传感器测量的测量模型输入参数的功能;我们推导出用于计算输入数量函数的衍生物的公式;通过测量降低的方法,确定近似网格,以最小化传感器误差的影响。我们提出了一种估算求解测量减少问题的效率的标准。考虑到给定的传感器错误,获得了用于估计输入量函数的衍生物中误差水平的公式。结果表明,实验结果与理论效果一致。研究结果的应用包括用于监控复杂技术对象状态的信息测量系统。

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