可解释性                        
                
                                
                        
                            范围(计算机科学)                        
                
                                
                        
                            计算机科学                        
                
                                
                        
                            人工智能                        
                
                                
                        
                            机器学习                        
                
                                
                        
                            过程(计算)                        
                
                                
                        
                            透视图(图形)                        
                
                                
                        
                            数据科学                        
                
                                
                        
                            有机太阳能电池                        
                
                                
                        
                            光伏系统                        
                
                                
                        
                            数据挖掘                        
                
                                
                        
                            工程类                        
                
                                
                        
                            电气工程                        
                
                                
                        
                            程序设计语言                        
                
                                
                        
                            操作系统                        
                
                        
                    
            作者
            
                Yuta Miyake,Akinori Saeki            
         
                    
        
    
            
            标识
            
                                    DOI:10.1021/acs.jpclett.1c03526
                                    
                                
                                 
         
        
                
            摘要
            
            Nonfullerene, a small molecular electron acceptor, has substantially improved the power conversion efficiency of organic photovoltaics (OPVs). However, the large structural freedom of π-conjugated polymers and molecules makes it difficult to explore with limited resources. Machine learning, which is based on rapidly growing artificial intelligence technology, is a high-throughput method to accelerate the speed of material design and process optimization; however, it suffers from limitations in terms of prediction accuracy, interpretability, data collection, and available data (particularly, experimental data). This recognition motivates the present Perspective, which focuses on utilizing the experimental data set for ML to efficiently aid OPV research. This Perspective discusses the trends in ML-OPV publications, the NFA category, and the effects of data size and explanatory variables (fingerprints or Mordred descriptors) on the prediction accuracy and explainability, which broadens the scope of ML and would be useful for the development of next-generation solar cell materials.
         
            
 
                 
                
                    
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