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Applied and Environmental Microbiology, April 2000, p. 1435-1443, Vol. 66, No. 4
Institute of Grassland and Environmental
Research, Plas Gogerddan, Aberystwyth, Ceredigion SY23
3EB,1 and Institute of Biological
Sciences, University of Wales, Aberystwyth, Ceredigion SY23
3DA,2 Wales
Received 2 July 1999/Accepted 10 January 2000
The enormous variety of substances which may be added to forage in
order to manipulate and improve the ensilage process presents an
empirical, combinatorial optimization problem of great complexity. To
investigate the utility of genetic algorithms for designing effective
silage additive combinations, a series of small-scale proof of
principle silage experiments were performed with fresh ryegrass. Having
established that significant biochemical changes occur over an ensilage
period as short as 2 days, we performed a series of experiments in
which we used 50 silage additive combinations (prepared by using eight
bacterial and other additives, each of which was added at six different
levels, including zero [i.e., no additive]). The decrease in pH, the
increase in lactate concentration, and the free amino acid
concentration were measured after 2 days and used to calculate a
"fitness" value that indicated the quality of the silage (compared
to a control silage made without additives). This analysis
also included a "cost" element to account for different total
additive levels. In the initial experiment additive levels were
selected randomly, but subsequently a genetic algorithm program was
used to suggest new additive combinations based on the fitness values
determined in the preceding experiments. The result was very efficient
selection for silages in which large decreases in pH and high levels of
lactate occurred along with low levels of free amino acids. During the
series of five experiments, each of which comprised 50 treatments,
there was a steady increase in the amount of lactate that accumulated;
the best treatment combination was that used in the last experiment,
which produced 4.6 times more lactate than the untreated silage. The
additive combinations that were found to yield the highest fitness
values in the final (fifth) experiment were assessed to determine a
range of biochemical and microbiological quality parameters during
full-term silage fermentation. We found that these combinations
compared favorably both with uninoculated silage and with a commercial silage additive. The evolutionary computing methods described here are
a convenient and efficient approach for designing silage additives.
0099-2240/00/$04.00+0
Copyright © 2000, American Society for Microbiology. All rights reserved.
Efficient Improvement of Silage Additives by Using Genetic
Algorithms
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Corresponding author. Mailing address: Institute of
Biological Sciences, University of Wales, Aberystwyth, Ceredigion SY23 3DA, Wales. Phone: 0044-1970-622325. Fax: 0044-1970-622350. E-mail: gwg{at}aber.ac.uk.
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