针对目前监视控制和数据采集(supervision control and data acquisition,SCADA)系统和广域测量系统(wide-area measurement system,WAMS)量测数据的特点,提出了一种计及相量测量单元(phasor measurement unit,PMU)的量测量变换状态估...针对目前监视控制和数据采集(supervision control and data acquisition,SCADA)系统和广域测量系统(wide-area measurement system,WAMS)量测数据的特点,提出了一种计及相量测量单元(phasor measurement unit,PMU)的量测量变换状态估计。文中利用量测量变换方法,将SCADA和WAMS下的各类量测转化为等效电压量测,经简化处理得到了常实数信息矩阵,实现了节点电压实部、虚部的解耦计China(NSFC)(50177066).算。该算法具有计算速度快的特点,克服了传统量测量变换状态估计只能处理单一支路功率量测的弊端。IEEE30节点系统算例验证了所提方法的有效性。展开更多
Pulse Doppler radar measurements consist of range, azimuth, elevation and radial velocity. Most of the radar tracking algorithms in engineering only utilize position measurement. The extended Kalman filter with radial...Pulse Doppler radar measurements consist of range, azimuth, elevation and radial velocity. Most of the radar tracking algorithms in engineering only utilize position measurement. The extended Kalman filter with radial velocity measureneut is presented, then a new filtering algorithm utilizing radial velocity measurement is proposed to improve tracking results and the theoretical analysis is also given. Simulation results of the new algorithm, converted measurement Kalman filter, extended Kalman filter are compared. The effectiveness of the new algorithm is verified by simulation results.展开更多
For vision-based mobile robot navigation, images of the same scene may undergo a general affine transformation in the case of significant viewpoint changes. So, a novel method for detecting affine invariant interest p...For vision-based mobile robot navigation, images of the same scene may undergo a general affine transformation in the case of significant viewpoint changes. So, a novel method for detecting affine invariant interest points is proposed to obtain the invariant local features, which is coined polynomial local orientation tensor(PLOT). The new detector is based on image local orientation tensor that is constructed from the polynomial expansion of image signal. Firstly, the properties of local orientation tensor of PLOT are analyzed, and a suitable tuning parameter of local orientation tensor is chosen so as to extract invariant features. The initial interest points are detected by local maxima search for the smaller eigenvalues of the orientation tensor. Then, an iterative procedure is used to allow the initial interest points to converge to affine invariant interest points and regions. The performances of this detector are evaluated on the repeatability criteria and recall versus 1-precision graphs, and then are compared with other existing approaches. Experimental results for PLOT show strong performance under affine transformation in the real-world conditions.展开更多
文摘针对目前监视控制和数据采集(supervision control and data acquisition,SCADA)系统和广域测量系统(wide-area measurement system,WAMS)量测数据的特点,提出了一种计及相量测量单元(phasor measurement unit,PMU)的量测量变换状态估计。文中利用量测量变换方法,将SCADA和WAMS下的各类量测转化为等效电压量测,经简化处理得到了常实数信息矩阵,实现了节点电压实部、虚部的解耦计China(NSFC)(50177066).算。该算法具有计算速度快的特点,克服了传统量测量变换状态估计只能处理单一支路功率量测的弊端。IEEE30节点系统算例验证了所提方法的有效性。
文摘Pulse Doppler radar measurements consist of range, azimuth, elevation and radial velocity. Most of the radar tracking algorithms in engineering only utilize position measurement. The extended Kalman filter with radial velocity measureneut is presented, then a new filtering algorithm utilizing radial velocity measurement is proposed to improve tracking results and the theoretical analysis is also given. Simulation results of the new algorithm, converted measurement Kalman filter, extended Kalman filter are compared. The effectiveness of the new algorithm is verified by simulation results.
基金Projects(61203332,61203208) supported by the National Natural Science Foundation of China
文摘For vision-based mobile robot navigation, images of the same scene may undergo a general affine transformation in the case of significant viewpoint changes. So, a novel method for detecting affine invariant interest points is proposed to obtain the invariant local features, which is coined polynomial local orientation tensor(PLOT). The new detector is based on image local orientation tensor that is constructed from the polynomial expansion of image signal. Firstly, the properties of local orientation tensor of PLOT are analyzed, and a suitable tuning parameter of local orientation tensor is chosen so as to extract invariant features. The initial interest points are detected by local maxima search for the smaller eigenvalues of the orientation tensor. Then, an iterative procedure is used to allow the initial interest points to converge to affine invariant interest points and regions. The performances of this detector are evaluated on the repeatability criteria and recall versus 1-precision graphs, and then are compared with other existing approaches. Experimental results for PLOT show strong performance under affine transformation in the real-world conditions.