Performance analysis of derandomized evolution strategies in quantum control experiments

Genetic Algorithms (GAs) are historically the most commonly used optimization method in Quantum Control (QC) experiments. We transfer specific Derandomized Evolution Strategies (DES) that have performed well on noise-free theoretical Quantum Control calculations, including the Covariance Matrix Adaptation (CMA-ES) algorithm, into the noisy environment of Quantum Control experiments. We study the performance of these DES variants in laboratory experiments, and reveal the underlying strategy dynamics of first- versus second-order landscape information. It is experimentally observed that global maxima of the given QC landscapes are located when only first-order information is used during the search. We report on the disruptive effects to which DES are exposed in these experiments, and study covariance matrix learning in noisy versus noise-free environments. Finally, we examine the characteristic behavior of the algorithms on the given landscapes, and draw some conclusions regarding the use of DES in QC laboratory experiments.

[1]  Kompa,et al.  Whither the future of controlling quantum phenomena? , 2000, Science.

[2]  H. Rabitz,et al.  Quantum mechanical optimal control of physical observables in microsystems , 1990 .

[3]  Optimal dynamic discrimination in the laboratory , 2007 .

[4]  Herschel Rabitz,et al.  Coherent Control of Quantum Dynamics: The Dream Is Alive , 1993, Science.

[5]  D. Zeidler,et al.  Evolutionary algorithms and their application to optimal control studies , 2001 .

[6]  Ofer M. Shir,et al.  The second harmonic generation case-study as a gateway for es to quantum control problems , 2007, GECCO '07.

[7]  H. Rabitz,et al.  Optimal control of quantum-mechanical systems: Existence, numerical approximation, and applications. , 1988, Physical review. A, General physics.

[8]  Nikolaus Hansen,et al.  Completely Derandomized Self-Adaptation in Evolution Strategies , 2001, Evolutionary Computation.

[9]  Ofer M. Shir,et al.  Evolutionary Algorithms in the Optimization of Dynamic Molecular Alignment , 2006, 2006 IEEE International Conference on Evolutionary Computation.

[10]  Ofer M. Shir,et al.  Gaining Insights into Laser Pulse Shaping by Evolution Strategies , 2007, IWINAC.

[11]  H Rabitz,et al.  Coherent control of quantum dynamics: the dream is alive. , 2008, Science.

[12]  K. W. Cattermole The Fourier Transform and its Applications , 1965 .

[13]  Hans-Georg Beyer,et al.  Local performance of the (1 + 1)-ES in a noisy environment , 2002, IEEE Trans. Evol. Comput..

[14]  H. Rabitz,et al.  Why do effective quantum controls appear easy to find , 2006 .

[15]  David E. Goldberg,et al.  Genetic Algorithms in Search Optimization and Machine Learning , 1988 .

[16]  Thomas Bäck,et al.  Evolution Strategies for Laser Pulse Compression , 2007, Artificial Evolution.

[17]  Nikolaus Hansen,et al.  A Derandomized Approach to Self-Adaptation of Evolution Strategies , 1994, Evolutionary Computation.

[18]  Gustav Gerber,et al.  Femtosecond quantum control of molecular dynamics in the condensed phase. , 2007, Physical chemistry chemical physics : PCCP.

[19]  Hans-Paul Schwefel,et al.  Evolution strategies – A comprehensive introduction , 2002, Natural Computing.

[20]  H. Rabitz,et al.  Teaching lasers to control molecules. , 1992, Physical review letters.

[21]  D. E. Goldberg,et al.  Genetic Algorithms in Search , 1989 .

[22]  Herschel Rabitz,et al.  Laboratory observation of quantum control level sets , 2006 .

[23]  Hans-Georg Beyer,et al.  Local Performance of the (μ/μ, μ)-ES in a Noisy Environment , 2000, FOGA.

[24]  Zbigniew Michalewicz,et al.  Evolutionary Computation 2 , 2000 .

[25]  Thomas Weinacht,et al.  Using feedback for coherent control of quantum systems , 2002 .

[26]  Nikolaus Hansen,et al.  Step-Size Adaption Based on Non-Local Use of Selection Information , 1994, PPSN.

[27]  Ofer M. Shir,et al.  Evolutionary algorithms in the optimization of dynamic molecular alignment , 2006 .

[28]  Anne Auger,et al.  Performance evaluation of an advanced local search evolutionary algorithm , 2005, 2005 IEEE Congress on Evolutionary Computation.

[29]  Nikolaus Hansen,et al.  Evaluating the CMA Evolution Strategy on Multimodal Test Functions , 2004, PPSN.