In many power system applications, such as N-x static security analysis and Monte-Carlo-simulation-based probabilistic power flow (PF) analysis, it is a very time-consuming task to analyze massive number of PFs on identical or similar network topology. This letter presents a novel GPU-accelerated batch LU-factorization solver that achieves higher level of parallelism and better memory-access efficiency through packaging massive number of LU-factorization tasks to formulate a new larger-scale problem. The proposed solver can achieve up to 76 times speedup when compared to KLU library and lays a critical foundation for massive-PFs-solving applications
The power grid is a complex network interconnecting energy sources with loads. The power flow and s...
Power flow computation is ubiquitous in the operation and planning of power systems.\ud Traditional ...
With the increase of size and complexity of interconnected power system, the dynamic stability simul...
Parallelizing the LU factorization of sparse Jacobian matrices reduces the execution time of the pow...
This letter proposes a superior GPU-accelerated algorithm for probabilistic power flow (PPF) based o...
Graphics processing unit (GPU) has been applied successfully in many scientific computing realms due...
State-of-the-art Graphics Processing Unit (GPU) has superior performances on float-pointing calculat...
Lower-upper (LU) factorization is widely used in many scientific computations. It is one of the most...
AbstractLU factorization is the most computationally intensive step in solving systems of linear equ...
Sparse solver has become the bottleneck of SPICE simulators. There has been few work on GPU-based sp...
This paper focuses on using the Newton-Raphson method to solve the power-fiow problems. Since the mo...
Solution for network equations is frequently encountered by power system researchers. With the incre...
With the increase of size and complexity of interconnected power system, the dynamic stability simul...
Power systems computations for nowadays common large distributed systems typically involve the usage...
This thesis addresses the utilization of Graphics Processing Units (GPUs) to improve the Power Flow ...
The power grid is a complex network interconnecting energy sources with loads. The power flow and s...
Power flow computation is ubiquitous in the operation and planning of power systems.\ud Traditional ...
With the increase of size and complexity of interconnected power system, the dynamic stability simul...
Parallelizing the LU factorization of sparse Jacobian matrices reduces the execution time of the pow...
This letter proposes a superior GPU-accelerated algorithm for probabilistic power flow (PPF) based o...
Graphics processing unit (GPU) has been applied successfully in many scientific computing realms due...
State-of-the-art Graphics Processing Unit (GPU) has superior performances on float-pointing calculat...
Lower-upper (LU) factorization is widely used in many scientific computations. It is one of the most...
AbstractLU factorization is the most computationally intensive step in solving systems of linear equ...
Sparse solver has become the bottleneck of SPICE simulators. There has been few work on GPU-based sp...
This paper focuses on using the Newton-Raphson method to solve the power-fiow problems. Since the mo...
Solution for network equations is frequently encountered by power system researchers. With the incre...
With the increase of size and complexity of interconnected power system, the dynamic stability simul...
Power systems computations for nowadays common large distributed systems typically involve the usage...
This thesis addresses the utilization of Graphics Processing Units (GPUs) to improve the Power Flow ...
The power grid is a complex network interconnecting energy sources with loads. The power flow and s...
Power flow computation is ubiquitous in the operation and planning of power systems.\ud Traditional ...
With the increase of size and complexity of interconnected power system, the dynamic stability simul...