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Adaptive memory management scheme for MMU-less embedded systems

机译:免于MMU嵌入式系统的自适应内存管理方案

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This paper presents a memory allocation scheme that provides efficient dynamic memory allocation and defragmentation for embedded systems lacking a Memory Management Unit (MMU). Using as main criteria the efficiency in handling both external and internal memory fragmentation, as well as the requirements of soft real-time applications in constraint-embedded systems, the proposed solution of memory management delivers a more precise memory allocation process. The proposed Adaptive Memory Management Scheme (AMM) maintains a balance between performance and efficiency, with the objective to increase the amount of usable memory in MMU-less embedded systems with a bounded and acceptable timing behavior. By maximizing memory utilization, embedded systems applications can optimize their performance in time-critical tasks and meet the demands of Internet-of-Things (IoT) solutions, without undergoing memory leaks and unexpected failures. Its use requires no hardware MMU, and requires few or no manual changes to application software. The proposed scheme is evaluated providing encouraging results regarding performance and reliability compared to the default memory allocator. Allocation of fixed and random size blocks delivers a speedup ranging from 2x to 5x over the standard GLIBC allocator, while the de-allocation process is only 20% percent slower, but provides a perfect (0%) defragmented memory.
机译:本文介绍了一种内存分配方案,为缺少存储器管理单元(MMU)提供有效的动态内存分配和碎片整理。使用作为主要标准处理外部和内部存储器碎片的效率,以及在约束嵌入式系统中的软实时应用的要求,所提出的内存管理解决方案提供了更精确的内存分配过程。所提出的自适应内存管理方案(AMM)在性能和效率之间保持平衡,目的是增加MMU的嵌入式系统中的可用内存量,具有有界和可接受的时序行为。通过最大化内存利用率,嵌入式系统应用程序可以在时间关键任务中优化它们的性能,并满足内容互联网(IOT)解决方案的需求,而不会发生内存泄漏和意外故障。其使用不需要硬件MMU,并且需要少数或无手动更改应用程序软件。与默认内存分配器相比,评估所提出的方案,提供有关性能和可靠性的令人鼓舞的结果。固定和随机尺寸块的分配可通过标准GLIBC分配器提供从2x到5倍的加速,而解除分配过程速度较慢的20%,但提供了完美(0%)碎片整理的内存。

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