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KREST Institute Summer Research June 27, 2008. Robotic experiments in Synthetic Psychology. Project Leader: Dr. Pedro Diaz-Gomez. Research Group. Benoit Tufeu Cora James Judy Kula Terri Godman. First: What is a Robot?. It is an autonomous system. It must exist in the physical world.
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KREST Institute Summer Research June 27, 2008 Robotic experiments in Synthetic Psychology
Research Group • Benoit Tufeu • Cora James • Judy Kula • Terri Godman
First: What is a Robot? • It is an autonomous system. • It must exist in the physical world. • It must be able to sense its environment. • It can act based on the sensor. • It must achieve a goal. Pg. 2 The Robotics Primer, Maja J. Matarić
Problem: • To design a Braitenberg style robot simulation that would accurately touch a light and then seek the next.
Four Robots Terri Benoit Judy Cora
Four Environments Environment 1 Environment 2 Environment 4 Environment 3
Parameters of the selected robot: Benoit’s Robot B +10 -2 + (variable)
Hypothesis • A robot simulation that includes a central sensor with a small positive bias will be more accurate in acquiring and hitting lights then one with a central sensor with a high positive bias. • Note: Bias is a value that controls the speed of the engine based on the intensity of the light.
Experiments • Run Robot B through training Environment 4 with 10 trials, varying the bias on the central sensor from 0.0 to 1.0 (in 0.1 intervals). • Run Robot B through a new 14 light test environment with 10 trials, varying the bias in the same manner.
Initial Evaluations • After reviewing the data, we found that there was little difference in the accuracy at low biases of 0 to 1. • Further tests were run at biases of 5, 10, 15, and 20 in order to have a wider range of data.
Results of ANOVA test • All data from biases 0 to 20 on the central sensor was compared to the number of lights hit. • This showed statistically that bias has an effect on accuracy.
Analysis of ANOVA tests • The very small P-values statistically show that the bias value of the central sensor has a significant effect on the accuracy of robot performance. • To support our hypothesis that a low bias is more accurate, a KS (Kolmogorov-Smirnov) test was run to compare biases under one to biases greater than one.
K-S test results for Training Environment 4 Higher bias Lower bias
K-S test results for Test Environment 5 Higher bias Lower bias
Conclusions • Based on the results of the KS tests for both environments, a bias below 1 on the central sensor is more accurate then a bias above 1. This is consistent with our hypothesis.
Future Research Could Include • a larger trial population in order to be statistically more significant. • more test environments. • more variation of biases. • investigations on biases of the other sensors. • changes in the positions of sensors. • programming that allows for evaluation of environmental conditions
Application Building robots
Thank You, Gracias, Merci, Dr. Diaz The End