In almost a century of its development,Chinese ethnology has gradually formed some significant academic paradigms.One of them is the"ethnic research paradigm"which concentrates on summarizing,organizing,and ...In almost a century of its development,Chinese ethnology has gradually formed some significant academic paradigms.One of them is the"ethnic research paradigm"which concentrates on summarizing,organizing,and detailing social and cultural facts using"ethnicity"as its primary unit.This paradigm sees ethnicity as its foundational unit of study.Meanwhile,the"inter-ethnic research paradigm"transcends singular ethnic groups,spotlighting the complex interactions between multiple ethnic groups.It views a multi-ethnic community or region as its core research field,underscoring the nuances of cultural exchange,overlap,and shared experiences.These two paradigms,while distinct,are both invaluable to Chinese ethnology.They don't replace each other but rather work synergistically.Pioneering ethnologist,Fei Xiaotong,masterfully merged these paradigms in his groundbreaking"pluralism and unity"theory,ushering in a refreshed framework for Chinese ethnological studies.This article delves into these foundational paradigms from a historical academic lens,aiming to further refine and enrich the scientific methodologies employed in Chinese ethnology.展开更多
Addressed to the N-k_(1)-k_(2) cascading outages,it is computationally burdensome for the reliable calculation of active and reactive power flows.This paper builds a comprehensive framework with three algorithms,inclu...Addressed to the N-k_(1)-k_(2) cascading outages,it is computationally burdensome for the reliable calculation of active and reactive power flows.This paper builds a comprehensive framework with three algorithms,including the distribution factor(DF),the Newton-Raphson(NR),and the first iteration of NR algorithm(termed as 1J).Classifiers are designed to determine whether the NR algorithm should be employed for accuracy.Classifier features are extracted upon the analytical error of 1J.As reactive power is partially considered in the 1J but neglected in the DF algorithm,the deviation between the solutions is taken as one crucial feature.The support vector machine(SVM)is then utilized for classifier training.As the deep integration of the causal inference and the statistical paradigm,this framework calculates active and reactive power flows rapidly,reliably,and robustly.The effectiveness and robustness are fully validated in three typical IEEE systems.展开更多
Mesoscale characteristics and their interdimensional correlation are the focus of contemporary interdisciplinary research.Mesoscience is a discipline that has the potential to radically update the existing knowledge s...Mesoscale characteristics and their interdimensional correlation are the focus of contemporary interdisciplinary research.Mesoscience is a discipline that has the potential to radically update the existing knowledge structure,which differs from the conventional unit-scale and system-scale research models,revealing a previously untouchable area for scientific research.Integrative biology research aims to dissect the complex problems of life systems by conducting comprehensive research and integrating various disciplines from all biological levels of the living organism.However,the mesoscientific issues between different research units are neglected and challenging.Mesoscale research in biology requires the integration of research theories and methods from other disciplines(mathematics,physics,engineering,and even visual imaging)to investigate theoretical and frontier questions of biological processes through experiments,computations,and modeling.We reviewed integrative paradigms and methods for the biological mesoscale problems(focusing on oncology research)and prospected the potential of their multiple dimensions and upcoming challenges.We expect to establish an interactive and collaborative theoretical platform for further expanding the depth and width of our understanding on the nature of biology.展开更多
文摘In almost a century of its development,Chinese ethnology has gradually formed some significant academic paradigms.One of them is the"ethnic research paradigm"which concentrates on summarizing,organizing,and detailing social and cultural facts using"ethnicity"as its primary unit.This paradigm sees ethnicity as its foundational unit of study.Meanwhile,the"inter-ethnic research paradigm"transcends singular ethnic groups,spotlighting the complex interactions between multiple ethnic groups.It views a multi-ethnic community or region as its core research field,underscoring the nuances of cultural exchange,overlap,and shared experiences.These two paradigms,while distinct,are both invaluable to Chinese ethnology.They don't replace each other but rather work synergistically.Pioneering ethnologist,Fei Xiaotong,masterfully merged these paradigms in his groundbreaking"pluralism and unity"theory,ushering in a refreshed framework for Chinese ethnological studies.This article delves into these foundational paradigms from a historical academic lens,aiming to further refine and enrich the scientific methodologies employed in Chinese ethnology.
基金This work was supported by the China State Grid Corporation Project of the Key Technologies of Power Grid Proactive Support for Energy Transition(No.5100-202040325A-0-0-00).
文摘Addressed to the N-k_(1)-k_(2) cascading outages,it is computationally burdensome for the reliable calculation of active and reactive power flows.This paper builds a comprehensive framework with three algorithms,including the distribution factor(DF),the Newton-Raphson(NR),and the first iteration of NR algorithm(termed as 1J).Classifiers are designed to determine whether the NR algorithm should be employed for accuracy.Classifier features are extracted upon the analytical error of 1J.As reactive power is partially considered in the 1J but neglected in the DF algorithm,the deviation between the solutions is taken as one crucial feature.The support vector machine(SVM)is then utilized for classifier training.As the deep integration of the causal inference and the statistical paradigm,this framework calculates active and reactive power flows rapidly,reliably,and robustly.The effectiveness and robustness are fully validated in three typical IEEE systems.
基金National Key Research and Development Program of China,Grant/Award Numbers:2022YFE0103600,2021YFF1201300CAMS Innovation Fund for Medical Sciences(CIFMS),Grant/Award Number:2021-I2M-1-014+2 种基金National Natural Science Foundation of China,Grant/Award Numbers:81872280,82073094Open Issue of State Key Laboratory of Molecular Oncology,Grant/Award Number:SKL-KF-2021-16Independent Issue of State Key Laboratory of Molecular Oncology,Grant/Award Number:SKL-2021-16。
文摘Mesoscale characteristics and their interdimensional correlation are the focus of contemporary interdisciplinary research.Mesoscience is a discipline that has the potential to radically update the existing knowledge structure,which differs from the conventional unit-scale and system-scale research models,revealing a previously untouchable area for scientific research.Integrative biology research aims to dissect the complex problems of life systems by conducting comprehensive research and integrating various disciplines from all biological levels of the living organism.However,the mesoscientific issues between different research units are neglected and challenging.Mesoscale research in biology requires the integration of research theories and methods from other disciplines(mathematics,physics,engineering,and even visual imaging)to investigate theoretical and frontier questions of biological processes through experiments,computations,and modeling.We reviewed integrative paradigms and methods for the biological mesoscale problems(focusing on oncology research)and prospected the potential of their multiple dimensions and upcoming challenges.We expect to establish an interactive and collaborative theoretical platform for further expanding the depth and width of our understanding on the nature of biology.