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Hydrologic frequency linear parameter estimation method

A technology of parameter estimation and hydrological frequency, applied in computing, genetic model, complex mathematical operation, etc., can solve problems such as difficult solution process, solution difficulty, result error, etc., to simplify the parameter solution process, expand the scope of application, and improve the applicability Effect

Inactive Publication Date: 2011-06-01
NANJING UNIV
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AI Technical Summary

Problems solved by technology

From a comprehensive analysis, it can be seen that the above-mentioned commonly used parameter estimation methods mainly have the following problems: ①Except for MOM, almost all methods are affected by the line type when solving parameters, that is, for different distribution line types, the parameter solution expressions need to be derived separately and / or equation(s)
Although it is more intuitive and convenient to use MOM to solve the parameters, it does not vary with the distribution line type, but there are large errors in the results (especially when solving C s In practice, it is generally used to initially estimate parameter values; ②The process of solving parameters with various methods is more complicated and difficult
Even the relatively good POME and ML methods usually need to solve a nonlinear equation system, and the equation contains non-explicit functions such as Digamma function, which makes the solution difficult; ③The difficulty of solving parameters of various methods is affected by The number of parameters has a great influence; ④Although theoretically speaking, the parameter estimation effect of the ML method is good and the accuracy is high, but because the conventional method is to estimate the parameters by calculating partial derivatives, it brings many problems, and there are many defects in practical applications: One is that the solution process is difficult; the other is that it is generally considered that C s When >2, there is no local extremum, the likelihood equation has no solution, and the ML method is invalid at this time; the third is that when estimating the parameters of the P-III distribution, the parameter estimation results are insensitive due to the application of three first-order moments (Jin Guangyan .Review of parameter estimation methods in hydrological frequency calculation[J].Anhui Water Resources Science and Technology, 2004, 3:38-40), etc.
It is generally believed that C s > 2, there is no solution, only in [0, X min ] optimal solution; ② even if C s <2, since the three equations in formula (7) are nonlinear equations, and the first equation contains Digamma function, the solution process is difficult; ③ because three first-order moments are used in the solution process, the sequence Small values ​​play a dominant role in the determination of parameters, which is inconsistent with the actual situation

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  • Hydrologic frequency linear parameter estimation method

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Embodiment Construction

[0053] The essence of parameter estimation in hydrological frequency analysis is a parameter optimization problem. The conventional ML method is to find the maximum point of the likelihood function when the first-order partial derivative of formula (3) is zero. In view of the unique advantages of the genetic algorithm in parameter optimization, in order to overcome and solve the defects of the conventional ML method, and The idea of ​​estimating parameters by calculating partial derivatives is different. Here, the genetic algorithm is introduced into the optimization problem of solving the maximum value of the likelihood function, and then the ML method (SAGA-ML) based on SAGA (Simulated Annealing Genetic Algorithm) is established. The following takes the parameter estimation of the P-III type distribution as an example to describe the method in detail.

[0054] The relationship between the eigenvalue parameters and distribution parameters of the P-III distribution is shown in...

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Abstract

The invention discloses a hydrologic frequency linear parameter estimation method, which combines a simulated annealing-genetic algorithm (SAGA) and a maximum likelihood (ML) method to establish an SAGA-ML method, namely an expression for solving a minimal value of an opposite number of a likelihood function is taken as a target function, a parameter numeric area is estimated by a moments method,and is taken as a constraint condition, and then the SAGA is applied to perform parameter estimation. Essentially different from the thought of the conventional ML method, the SAGA-ML method carries out parameter optimization through a genetic algorithm. Monte Carlo experiments verify that the SAGA-ML method has good accuracy in aspects of parameter estimation and different frequency design valueestimation; simultaneously, the method is not limited to linear type, parameter number and the constraint condition, can avoid the conditions that the likelihood function has no solution and the likewhen the conventional ML method is applied; and the solving process is simple, convenient and quick, so that the ML method become an effective method theoretically and practically.

Description

technical field [0001] The invention relates to a hydrological frequency analysis method, in particular to a hydrological frequency linear parameter estimation method. Background technique [0002] Hydrological frequency analysis is to study the possibility of different numerical values ​​of a certain hydrological random variable, and to provide probabilistic hydrological design values ​​for water conservancy and hydropower project construction, water resource evaluation management, etc. Hydrological frequency analysis mainly involves two issues, one is line type selection, and the other is parameter estimation. So far, there are more than 10 kinds of line types used at home and abroad (Sun Jiliang, Qin Dayong. Research on general model of hydrological frequency analysis [J]. Journal of Hydraulic Science, 1989, (4): 1-10; Jin Guangyan. Review of hydrological frequency analysis [J] ]. Advances in Hydrological Science, 1999, 10(3): 319-327), but the probability distribution o...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F17/50G06F17/10G06N3/12
Inventor 王栋吴吉春桑燕芳祝晓彬
Owner NANJING UNIV
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