Aluminum smelting process furnace box temperature prediction method based on deep belief network

A deep belief network and furnace temperature technology, applied in temperature control, non-electric variable control, instruments, etc., can solve the problems of sensors and other components that are easily damaged and low economic benefits, achieving good results, good economic benefits, and huge reduction workload effect

Active Publication Date: 2018-11-27
GUANGXI UNIV
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Problems solved by technology

[0005] The purpose of the present invention is to provide a method for predicting the furnace temperature in the aluminum smelting process based on a deep belief network, so as to overcome the existing methods of using thermocouples to detect the furnace temperature to obtain the trend of the temperature. The sensors and other components are easily damaged and the economic benefits are not good. high disadvantage

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  • Aluminum smelting process furnace box temperature prediction method based on deep belief network
  • Aluminum smelting process furnace box temperature prediction method based on deep belief network
  • Aluminum smelting process furnace box temperature prediction method based on deep belief network

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Embodiment Construction

[0019] The specific embodiments of the present invention will be described in detail below in conjunction with the accompanying drawings, but it should be understood that the protection scope of the present invention is not limited by the specific embodiments.

[0020] Unless expressly stated otherwise, throughout the specification and claims, the term "comprise" or variations thereof such as "includes" or "includes" and the like will be understood to include the stated elements or constituents, and not Other elements or other components are not excluded.

[0021] Figure 1 to Figure 5 A structural schematic diagram of a method for predicting furnace temperature in an aluminum smelting process based on a deep belief network according to a preferred embodiment of the present invention is shown. The method for predicting a furnace temperature in an aluminum smelting process based on a deep belief network includes the following steps:

[0022] Step 1. Collect several sets of raw...

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Abstract

The invention discloses an aluminium smelting process furnace box temperature prediction method based on a deep belief network. The method comprises the following steps that 1, a plurality of sets oforiginal data are acquired; 2, for the original data acquired in the step 1, abnormal data is eliminated, and noise is removed to obtain normal data; 3, for the normal data obtained in the step 2, thedeep belief network is used for feature extraction to obtain feature vectors; 4, the sets of feature vectors are divided into a training set and a testing set, and a prediction model is built, wherein through the sets of feature vectors in the training set, the prediction model is trained constantly to obtain a trained prediction model; 5, each set of feature vectors in the testing set is used for testing the trained prediction model, if the testing stability is good, the prediction model can be used for predicting a furnace box temperature, and if the testing stability is not good, the step3 is returned to. According to the aluminium smelting process furnace box temperature prediction method based on the deep belief network, the furnace box temperature can be predicted through other indexes easy to detect, components and parts are not prone to be damaged, and the economic benefits are good.

Description

technical field [0001] The invention relates to the technical field of aluminum smelting, in particular to a furnace temperature prediction method in an aluminum smelting process based on a deep belief network. Background technique [0002] The aluminum smelting process is the first production process of the entire aluminum alloy processing process. This process directly affects the subsequent steps of heat preservation, casting and processing, and ultimately has a great impact on the quality and performance of the product. During the aluminum smelting process, precise temperature control plays a vital role in casting aluminum ingots. In the process of aluminum smelting, the physical changes and chemical reaction processes are closely related to the temperature. If the smelting temperature is too low, it is not conducive to the dissolution of alloy elements and the discharge of gases and inclusions, which will increase the tendency to form segregation and undercasting; too h...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G05D23/22
CPCG05D23/22
Inventor 黄清宝胡泽蒋成龙徐辰华
Owner GUANGXI UNIV
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