Sökresultat

Filtyp

Din sökning på "*" gav 535853 sökträffar

No title

6 LINEAR OPERATORS AND ADJOINTS 6.1 Introduction A study of linear operators and adjoints is essential for a sophisticated approach to many problems oflinear vector spaces. The associated concepts and notations of operator theory often streamline an otherwise cumber­ some analysis by eliminating the need for carrying along complicated explicit formulas and by enhancing one's insight of the problem

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/2019LinearSystem/Linear_operators_and_adjoints--David_G._Luenberger_-_Optimization_by_Vector_Space_Methods.pdf - 2025-07-06

No title

Adaptive Control K. J. Åström Department of Automatic Control, LTH Lund University October 23, 2020 Adaptive Control 1. Introduction 2. Self-oscillating Adaptive Control 3. Model Reference Adaptive Control 4. Estimation and Excitation 5. Minimum Variance Control 6. Self-Tuning Regulators 7. Learning and Dual Control 8. Applications 9. Related Fields 10. Summary Introduction Adapt to adjust to a sp

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/ControlSystemsSynthesis/2020/AdaptiveControleight.pdf - 2025-07-06

Control System Synthesis - Robust control - PhD Class - Fall 2020

Control System Synthesis - Robust control - PhD Class - Fall 2020 Control System Synthesis - Robust control PHD CLASS - FALL 2020 Uncertainty and robustness Where does uncertainty come from? Modelling uncertainty Robustness Small gain theorem Robust stability Robust performance Robust synthesis H∞ -synthesis H∞ -Loopshaping synthesis µ-analysis and synthesis 1 Introduction 2 Fundamentals 3 Design

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/ControlSystemsSynthesis/2020/Control_System_Synthesis___Robust_control.pdf - 2025-07-06

Control System Synthesis - Data-driven control - PhD Class - Fall 2020

Control System Synthesis - Data-driven control - PhD Class - Fall 2020 Control System Synthesis - Data-driven control PHD CLASS - FALL 2020 Introduction to data-driven control The importance of data-driven approaches Model-based and data-driven control Overview of data-driven control technique Predictive and learning DDC Use of local models Use of repetitive experiments Robust DDC Using convex opt

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/ControlSystemsSynthesis/2020/Control_System_Synthesis___data_driven_control.pdf - 2025-07-06

No title

PID Control Karl Johan Åström Tore Hägglund Department of Automatic Control, Lund University September 23, 2020 PID Control 1. Introduction 2. The Controller 3. Stability 4. Performance and Robustness 5. Empirical Tuning Rules 6. Tuning based on Optimization 7. Relay Auto-tuning 8. Limitations of PID Control 9. Summary Theme: The most common controller. Introduction ◮ PID control is widely used in

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/ControlSystemsSynthesis/2020/PIDeight.pdf - 2025-07-06

No title

Control System Synthesis - PhD Class Exercise session 2 October 8, 2020 1 Inverted pendulum on a cart Figure 1: Inverted pendulum. The equations of motion are : (M +m)ẍ+ bẋ+mlθ̈ cos θ −mlθ̇2 sin θ = F (J +ml2)θ̈ +mgl sin θ = −mlẍ cos θ (1) where: • M = 0.5kg is the mass of the cart • m = 0.2kg is the mass of the pendulum • b = 0.1N/m/sec is the coefficient of friction for the cart • l = 0.3m is

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/ControlSystemsSynthesis/2020/PhD_Class___exercise_session_2.pdf - 2025-07-06

No title

Control System Synthesis - PhD Class Handin 1: Temperature control in a heat exchanger 24/09/2020 A chemical reactor called “stirring tank” is depicted below. The top inlet delivers liquid to be mixed in the tank. The tank liquid must be maintained at a constant temperature by varying the amount of steam supplied to the heat exchanger (bottom pipe) via its control valve. Variations in the temperat

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/ControlSystemsSynthesis/2020/PhD_Class___handin_1.pdf - 2025-07-06

flexservo.dvi

flexservo.dvi Handin - Flexible Servo The process consists of three horizontal pulleys connected by two elastic belts. SensorDC motor The transfer function from motor to sensor can take 3 forms (Ts = 50ms): Unloaded: B = 0.28261z−3 + 0.50666z−4 A = 1− 1.41833z−1 + 1.58939z−2 − 1.31608z−3 + 0.88642z−4 Half Load: B = 0.10276z−3 + 0.18123z−4 A = 1− 1.99185z−1 + 2.20265z−2 − 1.84083z−3 + 0.89413z−4 Fu

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/ControlSystemsSynthesis/2020/handin2.pdf - 2025-07-06

Deep Learning for Nature Language Processing

Deep Learning for Nature Language Processing Deep Learning for Nature Language Processing Lianhao Yin Lund University lianhao.yin@energy.lth.se November 29, 2016 Lianhao Yin (LTH) DL for NLP November 29, 2016 1 / 21 Overview 1 Introduction 2 Word2vec 3 Recurrent Neural Networks 4 Dynamic Memory Networks Lianhao Yin (LTH) DL for NLP November 29, 2016 2 / 21 Natural Language Processing Natural langu

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/DeepLearning/2016/NLPLianhao.pdf - 2025-07-06

Practical overview of optimization of Deep Networks

Practical overview of optimization of Deep Networks Practical overview of optimization of Deep Networks Carl Åkerlindh December 15, 2016 Carl Åkerlindh | DL Training 2 / 19 Gradient descent optimization Backpropagation Batch gradient descent Online gradient descent Mini-batch gradient descent Challenges Gradient descent additions Momentum Nestrov accelerated gradient Adagrad Other SGD variants Add

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/DeepLearning/2016/dl_optimization.pdf - 2025-07-06

Fast Learning of Assembly Tasks using Dynamic Movement Primitives and Deterministic Policy Gradients

Fast Learning of Assembly Tasks using Dynamic Movement Primitives and Deterministic Policy Gradients Fast Learning of Assembly Tasks using Dynamic Movement Primitives and Deterministic Policy Gradients Fredrik Bagge Carlson* Martin Karlsson 1 / 10 Introduction One-shot learning using DMP Update DMP using reinforcement learning Learn sensor-feedback controller with DMP as nominal controller Introdu

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/DeepLearning/2016/dmp_dpg_pres.pdf - 2025-07-06

No title

Deep Learning on GPU Mattias Fält Dept. of Automatic Control Lund Institute of Technology Mattias Fält Deep Learning on GPU Overview What is the difference between CPU and GPU? What is CUDA, and how does it relate to cuBLAS and cuDNN? How is this connected to Deep Learning and Tensorflow? How do I run tensorflow on the GPU? What is a TPU? Mattias Fält Deep Learning on GPU GPU vs CPU http://allegro

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/DeepLearning/2016/presentation.pdf - 2025-07-06

Untitled

Untitled 1 History of Cont rol - Int roduc tion Karl Johan Åström Department of Automatic Control LTH Lund University Int roduc tion 1. Introduction 2. Practical Information 3. A Thumbnail History 4. The Power of Feedback 5. Summary Theme: Those who ignore history are doomed to repeat it. Those who cannot remember the past are condemned to repeat it. (George Santayana) Why bot her? ◮ Fun ◮ Useful

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/HistoryOfControl/2016/L01introductioneight.pdf - 2025-07-06

Untitled

Untitled 1 Process Cont rol Karl Johan Åström Department of Automatic Control LTH Lund University Process Cont rol K. J. Åström 1. Introduction 2. The Industrial Scene 3. Pneumatics 4. Theory? 5. Tuning 6. More Recent Development 7. Summary Theme: Measurement Control Instrumentation and Communication (pneumatic). Lectures 1940 1960 2000 1 Introduction 2 Governors | | | 3 Process Control | | | 4 Ae

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/HistoryOfControl/2016/L03ProcessControleight.pdf - 2025-07-06

L05ASMENyquistLecture.pdf

L05ASMENyquistLecture.pdf A S M E N y q u is t L e c tu re 2 0 0 5 N yq u is t an d H is S em in al P ap er s K ar l J o h an Å st rö m D ep ar tm en t o f M ec h an ic al E n g in ee ri n g U n iv er si ty o f C al if o rn ia S an ta B ar b ar a A S M E N y q u is t L e c tu re 2 0 0 5 H ar ry N yq u is t 18 89 -1 97 6 A G if te d S ci en ti st a n d E n g in ee r Jo h n so n -N yq u is t n o is

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/HistoryOfControl/2016/L05ASMENyquistLecturesix.pdf - 2025-07-06

()

() Automatic Control Emerges Karl Johan Åström Department of Automatic Control LTH Lund University Karl Johan Åström Automatic Control Emerges Automatic Control Emerges K. J. Åström 1 Introduction 2 The Computing Bottleneck 3 State of the Art around 1940 4 WWII 5 Servomechanisms 6 Summary Theme: Unification, theory, and analog computing. Karl Johan Åström Automatic Control Emerges Lectures 1940 19

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/HistoryOfControl/2016/L07ControlEmerges.pdf - 2025-07-06

L11Future.pdf

L11Future.pdf Some personal reflections The Future of Control K. J. Åström Department of Automatic Control LTH Lund University LTH April 24 2012 NAE, AFOSR, IEEE, IFAC LTH April 24 2012 The Systems Perspective In the past steady increases in knowledge has spawned new microdisciplines within engineering. However, contemporary challenges – from biomedical devices to complex manufacturing designs to

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/HistoryOfControl/2016/L11Future_8.pdf - 2025-07-06

governors.dvi

governors.dvi ON GOVERNORS J.C. MAXWELL From the Proceedings of the Royal Society, No.100, 1868. A GOVERNOR is a part of a machine by means of which the velocity of the machine is kept nearly uniform, notwithstanding variations in the driving-power or the resistance. Most governors depend on the centrifugal force of a piece connected with a shaft of the machine. When the velocity increases, this f

https://www.control.lth.se/fileadmin/control/Education/DoctorateProgram/HistoryOfControl/2016/MaxwellOnGovernors.pdf - 2025-07-06