Algoritmo Computacional Para Regular a Margem de Erro na Estimativa da Intensidade do Exercício
Por Enrique Ricardo Pablo Buendia-lozada (Autor).
Em Lecturas: Educación Física y Deportes v. 27, n 296, 2023.
Resumo
Desde 1938 existem problemas com os modelos usados para estimar a frequência cardíaca máxima, a aplicação da resposta da frequência cardíaca ao exercício tem sido usada para calcular a intensidade em que o treinamento será realizado, mas há muita variação entre as estimativas e as resultados medições reais, de modo que o desejável inclua variações de mais ou menos 3 batimentos por minuto. Com o exposto, objetiva-se a criação de um algoritmo computacional como ferramenta, que suporte a construção de modelos de regressão linear com o menor erro possível em batimentos por minuto. Esse aplicativo de software é publicado em acesso aberto no GitHub sob o nome eq.exe.
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