基于模块化多电平变换器的有源电力滤波器MMC-APF(modular multilevel converter-based active power filter)是用来处理非线性负载对电网带来的污染问题最有效的拓扑之一。提出了一种基于改进有限状态多步模型预测控制的MMC-APF,仅通...基于模块化多电平变换器的有源电力滤波器MMC-APF(modular multilevel converter-based active power filter)是用来处理非线性负载对电网带来的污染问题最有效的拓扑之一。提出了一种基于改进有限状态多步模型预测控制的MMC-APF,仅通过基波同步旋转坐标系实现对所有谐波的控制。首先,使用PI加重复控制的电流环复合控制得到上、下桥臂预导通子模块数,在此基础上进行多步交流侧电流模型预测,最终得到桥臂投入子模块数的最优解,缩小了寻找目标函数最优电平的搜索范围,无需设计权重因子,每相桥臂子模块的总投入数为[N-1,N+1],交流侧输出电平数最大可达2N+1,提高了MMC-APF交流侧电流补偿精度,并改善了系统动态性能。最后,搭建了MMC-APF平台,仿真和实验结果与理论分析一致,进一步验证了所提研究方案的可行性和有效性。展开更多
Due to global energy depletion,solar energy technology has been widely used in the world.The output power of the solar energy systems is affected by solar radiation.Accurate short-term forecasting of solar radiation c...Due to global energy depletion,solar energy technology has been widely used in the world.The output power of the solar energy systems is affected by solar radiation.Accurate short-term forecasting of solar radiation can ensure the safety of photovoltaic grids and improve the utilization efficiency of the solar energy systems.In the study,a new decomposition-boosting model using artificial intelligence is proposed to realize the solar radiation multi-step prediction.The proposed model includes four parts:signal decomposition(EWT),neural network(NARX),Adaboost and ARIMA.Three real solar radiation datasets from Changde,China were used to validate the efficiency of the proposed model.To verify the robustness of the multi-step prediction model,this experiment compared nine models and made 1,3,and 5 steps ahead predictions for the time series.It is verified that the proposed model has the best performance among all models.展开更多
文摘基于模块化多电平变换器的有源电力滤波器MMC-APF(modular multilevel converter-based active power filter)是用来处理非线性负载对电网带来的污染问题最有效的拓扑之一。提出了一种基于改进有限状态多步模型预测控制的MMC-APF,仅通过基波同步旋转坐标系实现对所有谐波的控制。首先,使用PI加重复控制的电流环复合控制得到上、下桥臂预导通子模块数,在此基础上进行多步交流侧电流模型预测,最终得到桥臂投入子模块数的最优解,缩小了寻找目标函数最优电平的搜索范围,无需设计权重因子,每相桥臂子模块的总投入数为[N-1,N+1],交流侧输出电平数最大可达2N+1,提高了MMC-APF交流侧电流补偿精度,并改善了系统动态性能。最后,搭建了MMC-APF平台,仿真和实验结果与理论分析一致,进一步验证了所提研究方案的可行性和有效性。
基金Project(2020TJ-Q06)supported by Hunan Provincial Science&Technology Talent Support,ChinaProject(KQ1707017)supported by the Changsha Science&Technology,ChinaProject(2019CX005)supported by the Innovation Driven Project of the Central South University,China。
文摘Due to global energy depletion,solar energy technology has been widely used in the world.The output power of the solar energy systems is affected by solar radiation.Accurate short-term forecasting of solar radiation can ensure the safety of photovoltaic grids and improve the utilization efficiency of the solar energy systems.In the study,a new decomposition-boosting model using artificial intelligence is proposed to realize the solar radiation multi-step prediction.The proposed model includes four parts:signal decomposition(EWT),neural network(NARX),Adaboost and ARIMA.Three real solar radiation datasets from Changde,China were used to validate the efficiency of the proposed model.To verify the robustness of the multi-step prediction model,this experiment compared nine models and made 1,3,and 5 steps ahead predictions for the time series.It is verified that the proposed model has the best performance among all models.