Download presentation
Presentation is loading. Please wait.
1
1 Part I Artificial Neural Networks Sofia Nikitaki
2
2 What is a Neural Network An information processing paradigm inspired by the biological nervous systems Key information processing system Large number of highly interconnected elements Learn by example
3
3 How the Human Brain Learns? A neuron collects signals dendrites
4
4 Artificial Neuron Many inputs and one output Modes of operation Training Using
5
5 How Neural Networks works Basic features: Construction of network Computation functions of network Training of network
6
6 Inside the Neural Network P i : inputs Σ : sum for each neuron f : function of the transfer output f(a i ) = Σ ( W i,i x P i )+b i b i : threshold of each node.
7
7 Inside the Neural Network (cnt’d)
8
8 Training of the network Supervised learning Output target exist Backpropagation technique Unsupervised learning Output target unknown The network adjust similar output for similar inputs
9
9 Backpropagation technique 1.Computes the total weight input Xi 2.Calculates the activity yi using the transfer function 3.Computes the error E
10
10 Backpropagation technique (cnt’d) How fast the E changes 1.Activity of an output unit is changed Error derivative (EA) Yi actual activity di the desired activity 2.As the total input received by an output unit is changed Quality (EI) is the answer from step 1 multiplied by the rate at which the output of a unit changes as its total input is changed. 3.As a weight on the connection into an output unit is changed 4.As the activity of a unit in the previous layer is changed
11
11 Transfer functions
12
12 Gradient descent method Algorithm step searchs locally to find the optimal value the optimal direction of the weight change Training function – TrainSCG updates weight, bias values Adaption Learning Function – LearnGDM updates weight, bias learning function
13
13 Performance Function - MSE Network's performance the mean of squared errors Measures the average of the square of the error
14
14 Part II Neural Networks and Location Sensing for indoor environments
15
15 CLS – Neural Networks Input Deciles of Signal Strength values Signal Strength measurements
16
16 Neural Network Input : Deciles of Signal Strength values 2 layers Input: 80 SS values per cell Total: 8 APs 85 neurons Tan-sigmoid transfer function POSITION Output:2 values x,y coordinates Linear transfer function
17
17 Results - Location Error Median 2,6meter
18
18 Neural Network Input : Signal Strength values Input: 480 SS values per cell Total: 8 APs 2 layers 100 neurons Tan-sigmoid transfer function POSITION Output:2 values x,y coordinates Linear transfer function
19
19 Results - Location Error Median 1.8 meter
20
20 CLS – Comparison of all methods
21
21
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.