Short term wind power prediction for regional wind farms based on spatial-temporal characteristic distribution
G Yu, C Liu, B Tang, R Chen, L Lu, C Cui, Y Hu… - Renewable Energy, 2022 - Elsevier
Accurate regional wind power prediction is of great significance to the wind farm clusters
integration and the economic dispatch of the regional power grid. The complex …
integration and the economic dispatch of the regional power grid. The complex …
Density peaks clustering based on density backbone and fuzzy neighborhood
Density peaks clustering (DPC) is as an efficient clustering algorithm due for using a non-
iterative process. However, DPC and most of its improvements suffer from the following …
iterative process. However, DPC and most of its improvements suffer from the following …
Dynamic graph-based label propagation for density peaks clustering
Clustering is a major approach in data mining and machine learning and has been
successful in many real-world applications. Density peaks clustering (DPC) is a recently …
successful in many real-world applications. Density peaks clustering (DPC) is a recently …
A robust clustering algorithm based on the identification of core points and KNN kernel density estimation
Density peaks clustering (DPC) has been proved to be an effective clustering method and
applied to many scientific fields. It can detect the density peak within each cluster and assign …
applied to many scientific fields. It can detect the density peak within each cluster and assign …
A robust density peaks clustering algorithm with density-sensitive similarity
Density peaks clustering (DPC) algorithm is proposed to identify the cluster centers quickly
by drawing a decision-graph without any prior knowledge. Meanwhile, DPC obtains arbitrary …
by drawing a decision-graph without any prior knowledge. Meanwhile, DPC obtains arbitrary …
Density peaks clustering with gap-based automatic center detection
Clustering is a task used to group data from variegated sources, including Big Data, the
Internet of Things, and social media. Density peaks clustering (DPC) has become a popular …
Internet of Things, and social media. Density peaks clustering (DPC) has become a popular …
Integration of data mining clustering approach in the personalized E-learning system
Educational data-mining is an evolving discipline that focuses on the improvement of self-
learning and adaptive methods. It is used for finding hidden patterns or intrinsic structures of …
learning and adaptive methods. It is used for finding hidden patterns or intrinsic structures of …
Flexible density peak clustering for real-world data
J Hou, H Lin, H Yuan, M Pelillo - Pattern Recognition, 2024 - Elsevier
In density based clustering, the density peak algorithm has attracted much attention due to
its effectiveness and simplicity, and a vast amount of clustering approaches have been …
its effectiveness and simplicity, and a vast amount of clustering approaches have been …
Partitioned fixed-priority scheduling of parallel tasks without preemptions
The study of parallel task models executed with predictable scheduling approaches is a
fundamental problem for real-time multiprocessor systems. Nevertheless, to date, limited …
fundamental problem for real-time multiprocessor systems. Nevertheless, to date, limited …
Automatic parking space detection system
Searching a suitable parking space in populated metropolitan city is extremely difficult for
drivers. Serious traffic congestion may occur due to unavailable parking space. Automatic …
drivers. Serious traffic congestion may occur due to unavailable parking space. Automatic …