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Optimizing rotary processes in synthetic molecular motors

  • Edzard M. Geertsema
  • , Sense Jan Van Der Molen
  • , Marco Martens
  • , Ben L. Feringa

Research output: Contribution to journalArticlepeer-review

62 Scopus citations

Abstract

We deal with the issue of quantifying and optimizing the rotation dynamics of synthetic molecular motors. For this purpose, the continuous four-stage rotation behavior of a typical light-activated molecular motor was measured in detail. All reaction constants were determined empirically. Next, we developed a Markov model that describes the full motor dynamics mathematically. We derived expressions for a set of characteristic quantities, i.e., the average rate of quarter rotations or "velocity," V, the spread in the average number of quarter rotations, D, and the dimensionless Péclet number, Pe =V/D. Furthermore, we determined the rate of full, four-step rotations (Ωeff), from which we derived another dimensionless quantity, the "rotational excess," r.e. This quantity, defined as the relative difference between total forward (Ω+) and backward (Ω-) full rotations, is a good measure of the unidirectionality of the rotation process. Our model provides a pragmatic tool to optimize motor performance. We demonstrate this by calculating V, D, Pe, Ωeff, and r.e. for different rates of thermal versus photochemical energy input. We find that for a given light intensity, an optimal temperature range exists in which the motor exhibits excellent efficiency and unidirectional behavior, above or below which motor performance decreases.

Original languageEnglish
Pages (from-to)16919-16924
Number of pages6
JournalProceedings of the National Academy of Sciences of the United States of America
Volume106
Issue number40
DOIs
StatePublished - Oct 6 2009

Keywords

  • Markov model
  • Unidirectional rotation

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