登录
首页 » Others » LPC1778FBD144原理图库

LPC1778FBD144原理图库

于 2020-12-01 发布
0 290
下载积分: 1 下载次数: 1

代码说明:

NXP,恩智浦,M3核微处理器,LPC1778 FBD144 原理图

下载说明:请别用迅雷下载,失败请重下,重下不扣分!

发表评论

0 个回复

  • 嵌入式课设计 万年历 源码+报告
    哈工程嵌入式课程设计万年历,源码+实验报告,完成日历显示、整点报时、闹钟、时间的图形显示和数字显示。
    2020-12-12下载
    积分:1
  • 稀疏自码深度学习的Matlab实现
    稀疏自编码深度学习的Matlab实现,sparse Auto coding,Matlab codetrain, m/7% CS294A/CS294W Programming Assignment Starter CodeInstructions%%%This file contains code that helps you get started ontheprogramming assignment. You will need to complete thecode in sampleIMAgEsml sparseAutoencoder Cost m and computeNumericalGradientml For the purpose of completing the assignment, you domot need tochange the code in this filecurer:YiBinYUyuyibintony@163.com,WuYiUniversityning, MATLAB Code for Sparse Autoencodtrain.m∥%%========%6% STEP 0: Here we provide the relevant parameters valuesthat willl allow your sparse autoencoder to get good filters; youdo not need to9 change the parameters belowvisibleSize =8*8; number of input unitshiddensize 25number of hidden unitssparsity Param =0.01; desired average activation ofthe hidden units7 (This was denoted by the greek alpharho, which looks like a lower-case pcurer:YiBinYUyuyibintony@163.com,WuYiUniversityning, MATLAB Code for Sparse Autoencod4/57train.,m∥in the lecture notes)1 ambda=0.0001%o weight decay parameterbeta 3%o weight of sparsity penalty term%%==:79 STEP 1: Implement sampleIMAGESAfter implementing sampleIMAGES, the display_networkcommand shouldfo display a random sample of 200 patches from the datasetpatches sampleIMAgES;display_network(patches(:, randi(size(patches, 2), 204, 1)), 8)%为产生一个204维的列向量,每一维的值为0~10000curer:YiBinYUyuyibintony@163.com,WuYiUniversityning, MATLAB Code for Sparse Autoencod5/57train.m/v%中的随机数,说明是随机取204个 patch来显示%o Obtain random parameters thetatheta= initializeParameters ( hiddenSize, visibleSize)%%=============三三三三====================================97 STEP 2: Implement sparseAutoencoder CostYou can implement all of the components (squared errorcost, weight decay termsparsity penalty) in the cost function at once, butit may be easier to do%o it step-by-step and run gradient checking (see STEP3 after each stepWecurer:YiBinYUyuyibintony@163.com,WuYiUniversityning, MATLAB Code for Sparse Autoencod6/57train. m vb suggest implementing the sparseAutoencoder Cost functionusing the following steps(a) Implement forward propagation in your neural networland implement the%squared error term of the cost function. Implementbackpropagation tocompute the derivatives. Then (using lambda=beta=(run gradient Checking%to verify that the calculations corresponding tothe squared error costterm are correctcurer:YiBinYUyuyibintony@163.com,WuYiUniversityning, MATLAB Code for Sparse Autoencod7/57train. m vl(b) Add in the weight decay term (in both the cost funcand the derivativecalculations), then re-run Gradient Checking toverify correctnessl (c) Add in the sparsity penalty term, then re-run gradiChecking toverify correctnessFeel free to change the training settings when debuggingyour%o code. (For example, reducing the training set sizecurer:YiBinYUyuyibintony@163.com,WuYiUniversityning, MATLAB Code for Sparse Autoencod8/57train m vl/number of hidden units may make your code run fasterand setting betaand/or lambda to zero may be helpful for debuggingHowever, in yourfinal submission of the visualized weights, please useparameters web gave in Step 0 abovecoS七grad]sparseAutoencoderCost(theta, visibleSize,hiddensize, lambda,sparsityParam, beta,patches)二〓二二二二二二二〓二〓二〓二〓=二====〓=curer:YiBinYUyuyibintony@163.com,WuYiUniversityning, MATLAB Code for Sparse Autoencod9/57train.m vlll96% STeP 3: Gradient CheckingHint: If you are debugging your code, performing gradienchecking on smaller modelsand smaller training sets (e. g, using only 10 trainingexamples and 1-2 hiddenunits) may speed things upl First, lets make sure your numerical gradient computationis correct for a%o simple function. After you have implemented computeNumerun the followingcheckNumericalGradientocurer:YiBinYUyuyibintony@163.com,WuYiUniversityDeep Learning, MATLAB Code for Sparse Autoencode10/57
    2020-12-05下载
    积分:1
  • 省市区三级联动数据库Mssql
    配合博文【MVC4.0搭建的省市县三联动】安装的数据库博文地址:http://blog.csdn.net/qq_17202783/article/details/43371421
    2020-11-30下载
    积分:1
  • CANOpen基本对象字典
    CANOpen基本对象字典
    2020-12-08下载
    积分:1
  • 模拟退火解决八皇后
    这次程序使用C#语言,使用了人工智能中的模拟退火算法解决了八皇后的问题,界面也很完整,可以给出很完整的数据。
    2020-12-02下载
    积分:1
  • Kraken波导不变量计算matlab
    利用matlab工具进行对不同海洋环境下声场干涉图案的获取,需要安装atwin声学工具。
    2020-12-04下载
    积分:1
  • 人工智能(哈工大)-赵铁军-2009 ppt
    8个部分共9章,覆盖了人工智能研究的核心内容8个部分9章是:人工智能概述—第1章 第1部分搜索(问题求解)—第2章 第2部分逻辑与推理—第3章 第3部分知识表示—第4章 不确定性推理—第5章 第4部分学习—第6章 第5部分自然语言理解简介—第7章 第6部分规划简介—第8章 第7部分多Agent系统—第9章 第8部分
    2020-11-29下载
    积分:1
  • 模糊k均值聚类算法matlab实现
    将模糊集理论和k-means聚类联系起来,设计了模糊k-means聚类算法,其聚类效果比单纯的k-means要好。
    2020-12-04下载
    积分:1
  • 全面详解lte源码
    全面详解lte:MATLAB建模、仿真与实现源代码,代码齐全,适合通信工程初学者仿真用
    2020-12-10下载
    积分:1
  • 通过OBD计算汽车油耗的方法
    通过obd读取油耗并且计算。可以获得较高的精度。
    2020-11-04下载
    积分:1
  • 696516资源总数
  • 106914会员总数
  • 0今日下载