Article ID Journal Published Year Pages File Type
385093 Expert Systems with Applications 2011 11 Pages PDF
Abstract

This paper proposes a novel contribution in Web caching area, especially in Web cache replacement, so-called intelligent client-side Web caching scheme (ICWCS). This approach is developed by splitting the client-side cache into two caches: short-term cache that receives the Web objects from the Internet directly, and long-term cache that receives the Web objects from the short-term cache. The objects in short-term cache are removed by least recently used (LRU) algorithm as short-term cache is full. More significantly, when the long-term cache saturates, the neuro-fuzzy system is employed efficiently in managing contents of the long-term cache. The proposed solution is validated by implementing trace-driven simulation and the results are compared with least recently used (LRU) and least frequently used (LFU) algorithms; the most common policies of evaluating Web caching performance. The simulation results have revealed that the proposed approach improves the performance of Web caching in terms of hit ratio (HR), up to 14.8% and 17.9% over LRU and LFU. In terms of byte hit ratio (BHR), the Web caching performance is improved up to 2.57% and 26.25%, and for latency saving ratio (LSR), the performance is better with 8.3% and 18.9% over LRU and LFU, respectively.

► A novel intelligent client-side Web caching scheme (ICWCS) is proposed to enhance the performance of the client-side caching by splitting the client-side cache into two caches, short-term cache and long-term cache. ► ANFIS is effectively employed to determine which Web objects at long-term cache should be removed. ► The objects in short-term cache are removed by least recently used (LRU) algorithm. ► The proposed intelligent client-side Web caching scheme(ICWCS) has better performance compared to the most common policies and improves the performance of client-side caching substantially.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
, ,