Coal Layer Thickness Estimation by Using Oblique Projection Based Iterative Method
            
                编号:470
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                                    更新:2024-05-17 09:07:26                浏览:1817次
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                摘要
                One of the most significant challenges for automating coal mining machinery is the shearer horizon control, of which the fundamental problem focuses on the coal-rock interface recognition (CIR). This paper proposes two novel CIR methods as well as the radar-based CIR scheme in underground mining. The low-frequency ultra-wideband (UWB) electromagnetic pulse radars are mounted on the shield plates of hydraulic supports to estimate the air and coal layer thickness above their antenna. First, the modified spatial smooth processing (MSSP) based covariance matrix is built to de-coherent the coherent echoes. Then, the lower–upper (LU) decomposition is incorporated into the conventional matrix propagator to improve the robustness and efficiently estimate the noise subspace. The Multiple Signal Classification (MUSIC) algorithm is applied to estimate the interface information. To further improve the robustness and accuracy, the alternative iteration process is given by using the oblique projection and the maximum likelihood (ML) method. Moreover, a priori knowledge of the emitted signal is not required anymore. The effectiveness and efficiency of two proposed algorithms are verified by simulation and experimental analyses.
 
             
            
                关键词
                coal-rock interface,matrix propagation,maximum likelihood,radar signal processing
             
            
            
                    稿件作者
                    
                        
                                    
                                        
                                                                            
                                    Cheng Cheng
                                    Soochow University
                                
                                    
                                                                                                                        
                                    Hongzhuang Wu
                                    Soochow University
                                
                                    
                                                                                                                        
                                    Songyong Liu
                                    China University of Mining and Technology
                                
                                             
                          
    
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