PDF-Reinforcement Learning Neural Networks and PI Control Applied to a Heating Coil Charles

Author : conchita-marotz | Published Date : 2014-12-11

Anderson Douglas C Hittle Alon D Katz and R Matt Kretchmar Department of Computer Science Colorado State University Fort Collins CO 80523 andersonkretchma cscolostateedu

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Reinforcement Learning Neural Networks and PI Control Applied to a Heating Coil Charles: Transcript


Anderson Douglas C Hittle Alon D Katz and R Matt Kretchmar Department of Computer Science Colorado State University Fort Collins CO 80523 andersonkretchma cscolostateedu Department of Mechanical Engineering Colorado State University Fort Collins. Kong Da, Xueyu Lei & Paul McKay. Digit Recognition. Convolutional Neural Network. Inspired by the visual cortex. Our example: Handwritten digit recognition. Reference: . LeCun. et al. . Back propagation Applied to Handwritten Zip Code Recognition. 1. Recurrent Networks. Some problems require previous history/context in order to be able to give proper output (speech recognition, stock forecasting, target tracking, etc.. One way to do that is to just provide all the necessary context in one "snap-shot" and use standard learning. Cost function. Machine Learning. Neural Network (Classification). Binary classification. . . 1 output unit. Layer 1. Layer 2. Layer 3. Layer 4. Multi-class classification . (K classes). K output units. Abhishek Narwekar, Anusri Pampari. CS 598: Deep Learning and Recognition, Fall 2016. Lecture Outline. Introduction. Learning Long Term Dependencies. Regularization. Visualization for RNNs. Section 1: Introduction. Abhishek Narwekar, Anusri Pampari. CS 598: Deep Learning and Recognition, Fall 2016. Lecture Outline. Introduction. Learning Long Term Dependencies. Regularization. Visualization for RNNs. Section 1: Introduction. Introduction 2. Mike . Mozer. Department of Computer Science and. Institute of Cognitive Science. University of Colorado at Boulder. Hinton’s Brief History of Machine Learning. What was hot in 1987?. Fall 2018/19. 7. Recurrent Neural Networks. (Some figures adapted from . NNDL book. ). Recurrent Neural Networks. Noriko Tomuro. 2. Recurrent Neural Networks (RNNs). RNN Training. Loss Minimization. Bidirectional RNNs. Dr. Abdul Basit. Lecture No. 1. Course . Contents. Introduction and Review. Learning Processes. Single & Multi-layer . Perceptrons. Radial Basis Function Networks. Support Vector and Committee Machines. SQXF Coil Splices / Leads J. Schmalzle May 5, 2014 SQXF Coil Splices / Leads Double extension lead. Pre-assembled into pairs using separate fixture. Lead length ??? 2 m used for HQ, longer than needed?? Dr David Wong. (With thanks to Dr Gari Clifford, G.I.T). The Multi-Layer Perceptron. single layer can only deal with linearly separable data. Composed of many connected neurons . Three general layers; . . 循环神经网络. Neural Networks. Recurrent Neural Networks. Humans don’t start their thinking from scratch every second. As you read this essay, you understand each word based on your understanding of previous words. You don’t throw everything away and start thinking from scratch again. Your thoughts have persistence.. Heng Pan. 6/7/2019. H. Pan. 2. Coil/wedges and Coil/ pole interfaces (QXF). Coil/pole contact. Coil/wedges contact. CP-1: Layer 1, coil/pole. CP-2: Layer 2, coil/pole. CW-11: Layer 1, coil block 3 / wedge. Garima Lalwani Karan Ganju Unnat Jain. Today’s takeaways. Bonus RL recap. Functional Approximation. Deep Q Network. Double Deep Q Network. Dueling Networks. Recurrent DQN. Solving “Doom”. Eli Gutin. MIT 15.S60. (adapted from 2016 course by Iain Dunning). Goals today. Go over basics of neural nets. Introduce . TensorFlow. Introduce . Deep Learning. Look at key applications. Practice coding in Python.

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