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Deepak Subramani wins the runner-up poster award at DyDESS 2014.

Deepak Subramani was awarded the runners up position for the poster titled “A Stochastic Optimization Method for Energy-based Path Planning” at the Dynamic Data Driven Environmental System Sciences Conference 2014. Congratulations Deepak!

Observations of the Mesoscale Variability in the Western Philippine Sea

Speaker: Steve Ramp [Announcement (PDF)]
Speaker Affiliation: President and CEO
SOLITON Ocean Services, Inc.
691 Country Club Drive
Carmel Valley, CA 93924
Date: Friday October 3 at 2 pm in 5-234

Host: Pierre Lermusiaux

Ocean mixing: From large scale ocean circulation to molecular diffusion

Speaker: Ali Mashayek [Announcement (PDF)]
Speaker Affiliation: Post Doctoral Associate
Department of Earth and Planetary Sciences, MIT
Date: Friday December 5 at 2 pm in 5-234

Host: Tom Peacock

Marco Cococcioni

Energy Optimal Path Planning Using Stochastic Dynamically Orthogonal Level Set Equations

Subramani, D.N., 2014. Energy Optimal Path Planning Using Stochastic Dynamically Orthogonal Level Set Equations. SM Thesis, Massachusetts Institute of Technology, Computation for Design and Optimization Graduate Program, September 2014.

The growing use of autonomous underwater vehicles and underwater gliders for a variety of applications gives rise to new requirements in the operation of these vehicles. One such important requirement is optimization of energy required for undertaking missions that will enable longer endurance and lower operational costs. Our goal in this thesis is to develop a computationally efficient, and rigorous methodology that can predict energy-optimal paths from among all time-optimal paths to complete an underwater mission. For this, we develop rigorous a new stochastic Dynamically Orthogonal Level Set optimization methodology. In our thesis, after a review of existing path planning methodologies with a focus on energy optimality, we present the background of time-optimal path planning using the level set method. We then lay out the questions that inspired the present thesis, provide the goal of the current work and explain an extension of the time-optimal path planning methodology to the time-optimal path planning in the case of variable nominal engine thrust. We then proceed to state the problem statement formally. Thereafter, we develop the new methodology for solving the optimization problem through stochastic optimization and derive new Dynamically Orthogonal Level Set Field equations. We then carefully present different approaches to handle the non-polynomial non-linearity in the stochastic Level Set Hamilton-Jacobi equations and also discuss the computational efficiency of the algorithm. We then illustrate the inner-workings and nuances of our new stochastic DO level set energy optimal path planning algorithm through two simple, yet important, canonical steady flows that simulate a steady front and a steady eddy. We formulate a double energy-time minimization to obtain a semi-analytical energy optimal path for the steady front crossing test case and compare the results to these of our stochastic DO level set scheme. We then apply our methodology to an idealized ocean simulation using Double Gyre flows, and finally show an application with real ocean data for completing a mission in the Middle Atlantic Bight and New Jersey Shelf/Hudson Canyon region.