Short-term climate forecast method based on Kalman filtering and evolution modeling

A technology of Kalman filter and forecasting method, which is applied in weather forecasting, meteorology, measuring devices, etc. It can solve problems such as technical level limitations, difficulties in forecasting theory, and large fluctuations in short-term climate data time series, so as to improve forecasting accuracy Effect

Active Publication Date: 2011-09-14
XI AN JIAOTONG UNIV
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Problems solved by technology

At present, short-term climate prediction mainly faces three major problems. First, there are many uncertain factors in climate change. The time series of short-term climate data fluctuates too much, and its accurate model cannot be determined.
The second is that the prediction equations for short-term climate change are extremely complex, and how to correctly characterize the interaction between various factors mathematically and physically has not yet been fully resolved
Therefore, facing the difficulty of prediction theory, short-term climate prediction cannot follow the

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  • Short-term climate forecast method based on Kalman filtering and evolution modeling
  • Short-term climate forecast method based on Kalman filtering and evolution modeling
  • Short-term climate forecast method based on Kalman filtering and evolution modeling

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Embodiment Construction

[0034] refer to figure 1 , figure 2 , image 3 , Figure 4 As shown, a short-term climate prediction method based on Kalman filtering and evolution modeling includes the following steps:

[0035] A) Collect historical data of predictors in climate prediction models, mainly including sunshine hours, temperature, relative humidity and rainfall in recent years;

[0036] B) Determining predictors and organizing historical data related to the predictors. The historical data is processed in segments, and the comprehensive effect result of each segment of data is regarded as a data item. At the same time, the processed data is divided into two parts: the initial value calculation sample and the detection sample;

[0037] C) Calculate the initial value of the Kalman filter based on the above samples:

[0038] Y t =X t beta t +e t

[0039] The above formula is the Kalman filter measurement equation. First, the regression coefficient β is calculated by multiple linear regres...

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Abstract

The invention discloses a short-term climate forecast method based on Kalman filtering and evolution modeling. The method comprises the following steps of: establishing a linear model about a forecast factor by the Kalman filtering at first; and simulating an error sequence approaching the Kalman filtering by using a non-linear ordinary differential equation math model on the basis of the linear model a, and performing error forecast. An evolution algorithm is an evolution process for simulating the nature by using a computer, in particular a calculation method for solving complicated problems by simulating biological evolution processes, and has the intelligent characteristics of self-adaptation, self-organization, self-learning, internal parallelism and the like. The two algorithms are combined with each other, so the natural characteristic of the climate can be simulated better than being simulated by a pure linear model, so the climate forecast precision is enhanced. By the method, short-term sunshine duration, temperature and rainfall can be forecast, so future knowledge of the short-term climate can be provided.

Description

technical field [0001] The invention belongs to a short-term climate prediction method, in particular to a short-term climate prediction method based on Kalman filtering and evolution modeling. This method can be used to solve short-term climate predictions that fluctuate greatly over time, such as sunshine hours and temperature, and is also suitable for long-term climate predictions. Background technique [0002] With the rapid development of my country's national economy, the country increasingly needs more accurate short-term climate prediction, especially in the departments of national planning, agriculture, water conservancy and disaster prevention and mitigation. Short-term climate prediction is a frontier topic in the field of international atmospheric science and earth science, and it is also an extremely difficult interdisciplinary problem. At present, short-term climate prediction mainly faces three major problems. First, there are many uncertain factors in climat...

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Application Information

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IPC IPC(8): G01W1/10
Inventor 杨清宇罗飞葛思擘庄健
Owner XI AN JIAOTONG UNIV
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