Estrategia de almacenamiento en la nube de blockchain basada en archivos dinámicos de predicción genética
Autores: Tang, Jiali; Huang, Chenrong; Liu, Huangxiaolie; Al-Nabhan, Najla
Idioma: Inglés
Editor: MDPI
Año: 2020
Acceso abierto
Artículo científico
2020
Estrategia de almacenamiento en la nube de blockchain basada en archivos dinámicos de predicción genética
Categoría
Ingeniería y Tecnología
Subcategoría
Ingeniería Eléctrica y Electrónica
Palabras clave
Expansión rápida
Almacenamiento en la nube blockchain
Carga dinámica de archivos
Algoritmo genético
Archivos de almacenamiento en la nube
Predicción de carga.
Licencia
CC BY-SA – Atribución – Compartir Igual
Consultas: 27
Citaciones: Sin citaciones
Con la rápida expansión del volumen de datos, los métodos tradicionales de almacenamiento de datos no han podido satisfacer los requisitos de aplicación práctica del almacenamiento en la nube de blockchain. Aiming for the cloud storage problem of blockchain, a new storage access method for predicting dynamic file load is proposed. By predicting the load status of cloud storage files in advance, the load of each blockchain data node at the next moment is first estimated. A hierarchical genetic algorithm is used to construct the connection weights between the hidden layer and the output layer, which makes the data network converge faster and more accurate, thereby effectively predicting the node load. In addition, based on the file allocation, an evaluation analysis model is constructed to obtain the time response capability of each file during the allocation process. The node"s periodic load prediction value is used to calculate the corresponding weight of the node and it is continuously updated, retaining the advantages of the static weighted polling algorithm. Combined with the genetic algorithm to help predict the file assignment access strategy of the later load of each node, it can meet the system requirements under complex load conditions and provide a reasonable and effective cloud storage method. The experimental evaluation of the proposed new strategy and new algorithm verifies that the new storage method has a faster response time, more balanced load, and greatly reduced energy consumption.
Descripción
Con la rápida expansión del volumen de datos, los métodos tradicionales de almacenamiento de datos no han podido satisfacer los requisitos de aplicación práctica del almacenamiento en la nube de blockchain. Aiming for the cloud storage problem of blockchain, a new storage access method for predicting dynamic file load is proposed. By predicting the load status of cloud storage files in advance, the load of each blockchain data node at the next moment is first estimated. A hierarchical genetic algorithm is used to construct the connection weights between the hidden layer and the output layer, which makes the data network converge faster and more accurate, thereby effectively predicting the node load. In addition, based on the file allocation, an evaluation analysis model is constructed to obtain the time response capability of each file during the allocation process. The node"s periodic load prediction value is used to calculate the corresponding weight of the node and it is continuously updated, retaining the advantages of the static weighted polling algorithm. Combined with the genetic algorithm to help predict the file assignment access strategy of the later load of each node, it can meet the system requirements under complex load conditions and provide a reasonable and effective cloud storage method. The experimental evaluation of the proposed new strategy and new algorithm verifies that the new storage method has a faster response time, more balanced load, and greatly reduced energy consumption.