FPGA Neural Networks Implementation for Nuclear Pulses Parameters Estimation

D. Estryk, G. E. Ríos, C. Verrastro
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引用次数: 3

Abstract

Nuclear pulses parameters estimation is needed in many nuclear applications. Its precision and performance requirements are very demanding, especially in PET applications. Quality of PET images depends on the energy and time resolution of gamma pulses detection. Neural networks estimators were analyzed in contrast with common methods. Two-layer feed-forward networks with three neurons in the hidden layer reached precision goal. The chosen estimators allowed the use of 40 MHz free running ADC obtaining precision of 1ns in the timestamp determination, exceeding coincidence detection requirements. An efficient VHDL implementation on an inexpensive Xilinx Spartan-3 FPGA was achieved that fulfill performance requirements, adding no dead time due to digital processing. The estimators and its FPGA implementations were verified on hardware and characterization were done using nuclear shaped pulses synthesized with an arbitrary function generator.
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核脉冲参数估计的FPGA神经网络实现
在许多核应用中都需要核脉冲参数估计。其精度和性能要求非常高,特别是在PET应用中。PET图像的质量取决于伽马脉冲检测的能量和时间分辨率。对神经网络估计方法与常用方法进行了对比分析。隐藏层包含三个神经元的两层前馈网络达到了精度目标。所选择的估计器允许使用40 MHz自由运行的ADC在时间戳确定中获得1ns的精度,超过了一致性检测要求。在价格低廉的Xilinx Spartan-3 FPGA上实现了高效的VHDL实现,满足了性能要求,并且没有由于数字处理而增加死区时间。在硬件上验证了该估计器及其FPGA实现,并利用任意函数发生器合成的核形脉冲进行了表征。
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