In-vehicle pressure fluctuation iterative learning control method and system under carbon dioxide constraint

A technology of iterative learning control and carbon dioxide, applied in the general control system, control/regulation system, adaptive control, etc., can solve problems such as limitations, no periodicity, and no consideration of carbon dioxide constraints, so as to achieve good control performance and strong Engineering practicability, the effect of suppressing pressure fluctuations in the vehicle

Active Publication Date: 2022-06-24
SOUTHWEST JIAOTONG UNIV
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Problems solved by technology

Due to the influence of the speed of the vehicle and the random disturbance of the surrounding environment, the tunnel pressure wave generated when the same high-speed train passes through the same tunnel has a morphological change in time scale and amplitude (the present invention refers to it as a fixed-shaped tunnel pressure wave), which is not It has strict periodicity, which

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  • In-vehicle pressure fluctuation iterative learning control method and system under carbon dioxide constraint
  • In-vehicle pressure fluctuation iterative learning control method and system under carbon dioxide constraint
  • In-vehicle pressure fluctuation iterative learning control method and system under carbon dioxide constraint

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Embodiment Construction

[0074] The present invention will be further described below with reference to the accompanying drawings and specific implementation methods.

[0075] An iterative learning control method for in-vehicle pressure fluctuation under carbon dioxide constraint of the present invention is as follows: figure 1 shown, including the following steps:

[0076] Step 1: Initialize.

[0077] After starting to implement the in-vehicle pressure fluctuation control method, initialization is required, which mainly includes determining the CO2 volume concentration limit, the 1s change rate limit of the in-vehicle pressure, and the desired in-vehicle pressure comfort index. Among them, the carbon dioxide volume concentration limit is 0.15%, the 1s change rate limit of the in-vehicle pressure is 200Pa / s, and the expected in-vehicle pressure comfort index is 0.

[0078] Step 2: Detect the carbon dioxide concentration in the car in real time.

[0079] Step 3: Determine whether the carbon dioxide ...

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Abstract

The invention discloses an in-vehicle pressure fluctuation iterative learning control method and system under carbon dioxide constraint. The method comprises the following steps: initializing parameters such as a carbon dioxide volume concentration limit value; detecting the carbon dioxide concentration in the vehicle in real time, comparing the carbon dioxide concentration with a limit value, and determining whether to open a ventilation air duct, execute pressure control in the vehicle or obtain a pressure signal in the vehicle; the 1s change rate of the pressure in the vehicle is calculated for continuous comparison; further judging whether the air duct leaves the tunnel or not, if so, performing variable amplitude processing, control error calculation and variable scale processing, and correcting the air duct valve opening control quantity according to an iterative learning control algorithm; the system comprises a detection module, a signal acquisition and processing module, an evaluation module, an in-vehicle pressure fluctuation control module, an output module and a vehicle body ventilation system module. The system can meet the requirements for the in-vehicle pressure comfort and the in-vehicle fresh air amount at the same time, and has the engineering application value.

Description

technical field [0001] The invention belongs to the technical field of in-vehicle pressure fluctuation control of high-speed trains, and in particular relates to an iterative learning control method and system for in-vehicle pressure fluctuation under the constraint of carbon dioxide. Background technique [0002] When the train runs at high speed in the tunnel, a severe tunnel pressure wave will be generated outside the car. The pressure change enters the car through the ventilation ducts, car body gaps and car body deformation, etc., resulting in pressure fluctuations in the car, which in turn affects the drivers and passengers. of comfort. [0003] According to existing literature, train air tightness is an important factor affecting passenger comfort. However, improving the air tightness of the train will increase the cost of train manufacturing. Therefore, after the air-tightness of the train is improved to a certain level, it is necessary to design a reasonable inter...

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Application Information

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IPC IPC(8): G05B13/04B61D27/00
CPCG05B13/042B61D27/0009
Inventor 杨露陈春俊屈国庆张敏邓吉
Owner SOUTHWEST JIAOTONG UNIV
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