Eliminación de los desechos industriales generados en la avicultura debido a la utilización de papel en la recepción de pollitos BB, mediante la incorporación al material de cama.
Thesis
Subjects > Engineering
Subjects > Nutrition
Subjects > Education
Ibero-american International University > Teaching > Master's Final Projects
Closed
Spanish
Esta investigación se realizó en la provincia de Santo domingo de los Tsáchilas – Ecuador, en una granja avícola de 8 galpones de pollo de engorde con una capacidad de 320000 pollos. El objetivo principal fue la eliminación de los desechos industriales avícolas puesto que durante la crianza de pollos de engorde se utiliza papel periódico en la recepción de las aves desde su llegada hasta aproximadamente el segundo o tercer día de alojamiento en galpones, el uso de este papel es para suministrar y dar accesibilidad a los pollitos bebe al alimento logrando así desarrollar su potencial desde los primeros días de vida; a partir del segundo o tercer día el papel utilizado en la recepción se transforma en un desecho industrial ya que este se lo retira de los galpones para evitar empastamientos en las camas y posibles lesiones en las patas de las aves. La prueba se realizó comparando 8 galpones de producción de pollos de engorde de los cuales en 4 galpones se retiró el papel generando desechos y 4 galpones se procedió a incorporar el papel al material de cama eliminando los desechos industriales avícolas. Se analizaron variables como la cantidad de desechos generados, los costos que involucran en cada tratamiento y la generación de impacto ambiental a las cuales se realizó un análisis descriptivo debido al interés del tema; por otro lado, para las variables de ambiente, como mediciones de amoniaco y humedad, así como para los parámetros productivos o zootécnicos se realizó un análisis de varianza para medir medias de los tratamientos y observar si existen diferencias significativas. Se obtuvo varios beneficios con el aprovechamiento del papel al incorporarlo al material de cama, el principal no generar contaminación e impacto ambiental, no llenar espacios en vertederos lo cual a la par es un impacto social positivo ya que se dispondría de estos espacios para los desechos de la comunidad, por otro lado los avicultores ahorran en costos como transporte de desechos, pagos en vertederos o municipios, menor mano de obra por actividades como el retiro de papel y se demostró que la incorporación de papel al material de cama no afecta en los resultados zootécnicos o productivos de las aves.
metadata
Pazmiño Valencia, Edison Paúl
mail
paulsin_pv@hotmail.com
(2022)
Eliminación de los desechos industriales generados en la avicultura debido a la utilización de papel en la recepción de pollitos BB, mediante la incorporación al material de cama.
Master's thesis, UNSPECIFIED.
Abstract
Esta investigación se realizó en la provincia de Santo domingo de los Tsáchilas – Ecuador, en una granja avícola de 8 galpones de pollo de engorde con una capacidad de 320000 pollos. El objetivo principal fue la eliminación de los desechos industriales avícolas puesto que durante la crianza de pollos de engorde se utiliza papel periódico en la recepción de las aves desde su llegada hasta aproximadamente el segundo o tercer día de alojamiento en galpones, el uso de este papel es para suministrar y dar accesibilidad a los pollitos bebe al alimento logrando así desarrollar su potencial desde los primeros días de vida; a partir del segundo o tercer día el papel utilizado en la recepción se transforma en un desecho industrial ya que este se lo retira de los galpones para evitar empastamientos en las camas y posibles lesiones en las patas de las aves. La prueba se realizó comparando 8 galpones de producción de pollos de engorde de los cuales en 4 galpones se retiró el papel generando desechos y 4 galpones se procedió a incorporar el papel al material de cama eliminando los desechos industriales avícolas. Se analizaron variables como la cantidad de desechos generados, los costos que involucran en cada tratamiento y la generación de impacto ambiental a las cuales se realizó un análisis descriptivo debido al interés del tema; por otro lado, para las variables de ambiente, como mediciones de amoniaco y humedad, así como para los parámetros productivos o zootécnicos se realizó un análisis de varianza para medir medias de los tratamientos y observar si existen diferencias significativas. Se obtuvo varios beneficios con el aprovechamiento del papel al incorporarlo al material de cama, el principal no generar contaminación e impacto ambiental, no llenar espacios en vertederos lo cual a la par es un impacto social positivo ya que se dispondría de estos espacios para los desechos de la comunidad, por otro lado los avicultores ahorran en costos como transporte de desechos, pagos en vertederos o municipios, menor mano de obra por actividades como el retiro de papel y se demostró que la incorporación de papel al material de cama no afecta en los resultados zootécnicos o productivos de las aves.
| Document Type: | Thesis (Master's) |
|---|---|
| Keywords: | Desecho industrial avícola; Papel de recepción en pollos, Manejo de cama en aves, Pollinasa, Manejo de pollos engorde. |
| Subject classification: | Subjects > Engineering Subjects > Nutrition Subjects > Education |
| Divisions: | Ibero-american International University > Teaching > Master's Final Projects |
| Deposited: | 03 Nov 2023 23:30 |
| Last Modified: | 03 Nov 2023 23:30 |
| URI: | https://repositorio.unib.org/id/eprint/1918 |
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