In the smart grid, the development of electric power Demand Response (DR) brings great change to the traditional power utilization mode. Combined with real-time electricity price, consumers can adjust their power utilization mode by their energy demand. This makes load forecasting more complicated. The multi-input and two-output Least Squares Support Vector Machine (LS-SVM) was proposed to preliminarily predict the load and price at the same time. Considering the interaction between the real-time electricity price and load, the fuzzy recursive inference system based on data mining technology was adopted to simulate the game process of the forecasting of the price and load, and then the preliminary forecast results of multi-variable LS-SVM prediction algorithm were recursively corrected until the forecasting results were tending towards stability. Multi-variable LS-SVM can avoid running into local optima and has an excellent capacity of generalization, the improved association rules mining algorithm and loop predictive control algorithm have good completeness and robustness, and can correct the forecasting result approximately in every real situation. Simulation results of the actual power system show that the proposed method has better application effects.
In order to improve the processing ability for uncertainty data using the traditional Fuzzy Support Vector Machine (FSVM), FSVM with fuzzy similarity measure and high dimensional space fuzzy mapping was proposed. Firstly, by using Gregson similarity measure, the fuzzy similarity measure function was established, which was effective to explain the uncertainty information. And then, using the theory of mapping and Mercer, fuzzy similarity kernel learning was formulated and used in the algorithm of the FSVM. Finally, this algorithm was used to the modeling of the material removal rate in the rotary ultrasonic machining with uncertainty data. Compared to the results using traditional FSVM methods, the current approach can better process uncertainty data with less operation steps. And the proposed method has higher accuracy in processing uncertainty data with lower computational complexity.
The UMHexagonS motion estimation algorithm in H.264 was studied, and an improved fast motion estimation algorithm was proposed. First, the fixed search range, the unsymmetrical cross search, the 5×5 small rectangular spiral search, the uneven multi-hexagon-grid search and the extended hexagon-based search were analyzed. Then the optimized search modes were given respectively, which called dynamic search window, adaptive rood pattern search, the directional 3×3 small rectangular search pattern, the predictive intensive direction search and the modified extended hexagon-based search. Thus Adaptive Pattern Direction Search (APDS) algorithm was formed by these optimized search modes. The experimental results conducted on different test sequences show that, compared to UMHexagonS algorithm, the APDS algorithm can save about 29.64% Motion Estimation (ME) time and reduce the average number of checking points per Motion Vector (MV) generation about 21.64, while incurring nothing obvious loss in the reconstructed picture quality and less increment in the bit rate. With the efficiency improvement of ME, the real-time performance of the encoder is further enhanced.
A remote real-time management system for FC-RAID 3000 based on embedded Web server GoAhead was designed and implemented. The system communicated with remote user through GoAhead, which accepted the user’s requests and responded with corresponding Web pages stored in the minimal file system. When the user logged in, the remote management module would authenticates the user’s authority; and when the user sent configuring and monitoring command, the remote management module would parse the command and execute it by calling the functions provided by RAID controlling module. The system can efficiently improve the management performance of FC-RAID 3000.