Optimal guidance and estimation of a 2D diffusion-advection process by a team of mobile sensors

  title={Optimal guidance and estimation of a 2D diffusion-advection process by a team of mobile sensors},
  author={Sheng Cheng and Derek A. Paley},
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O C ] 2 N ov 2 02 1 Optimal guidance and estimationof a 2 Ddiffusion-advection process bya teamofmobile sensors ⋆
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