Gliricidia sepium (gliricidia).

Author(s):  
Julissa Rojas-Sandoval

Abstract G. sepium is an extremely versatile, fast-growing, nitrogen-fixing agroforestry tree that is adaptable to a wide range of humid and sub-humid climates and soil conditions including moderately acid and infertile. It is extremely easy to propagate and manage in a wide diversity of different smallholder farming systems to provide a multiplicity of high quality products and services and is a true multipurpose tree. It is one of the commonest and best-known trees in Central America and now has a pantropical distribution cultivated in villages, farms, backyards and along fence lines, paddy bunds, roadsides and terrace boundaries. It is probably the most widely cultivated multipurpose agroforestry tree after Leucaena leucocephala (Simons and Stewart, 1994) and has become increasingly popular due to the problems caused to Leucaena by the psyllid defoliator, Heteropsylla cubana. However, its value and benefits are not universally accepted as there is still debate over the quality of G. sepium forage.

Dairy ◽  
2021 ◽  
Vol 2 (3) ◽  
pp. 422-424
Author(s):  
Paola Scano ◽  
Pierluigi Caboni

Small ruminants, such as sheep and goats, are mostly raised in smallholder farming systems widely distributed throughout the world [...]


AMBIO ◽  
2012 ◽  
Vol 42 (3) ◽  
pp. 344-356 ◽  
Author(s):  
Isaline Jadin ◽  
Veerle Vanacker ◽  
Huong Thi Thu Hoang

2021 ◽  
Author(s):  
Jason Hunter ◽  
Mark Thyer ◽  
Dmitri Kavetski ◽  
David McInerney

<p>Probabilistic predictions provide crucial information regarding the uncertainty of hydrological predictions, which are a key input for risk-based decision-making. However, they are often excluded from hydrological modelling applications because suitable probabilistic error models can be both challenging to construct and interpret, and the quality of results are often reliant on the objective function used to calibrate the hydrological model.</p><p>We present an open-source R-package and an online web application that achieves the following two aims. Firstly, these resources are easy-to-use and accessible, so that users need not have specialised knowledge in probabilistic modelling to apply them. Secondly, the probabilistic error model that we describe provides high-quality probabilistic predictions for a wide range of commonly-used hydrological objective functions, which it is only able to do by including a new innovation that resolves a long-standing issue relating to model assumptions that previously prevented this broad application.  </p><p>We demonstrate our methods by comparing our new probabilistic error model with an existing reference error model in an empirical case study that uses 54 perennial Australian catchments, the hydrological model GR4J, 8 common objective functions and 4 performance metrics (reliability, precision, volumetric bias and errors in the flow duration curve). The existing reference error model introduces additional flow dependencies into the residual error structure when it is used with most of the study objective functions, which in turn leads to poor-quality probabilistic predictions. In contrast, the new probabilistic error model achieves high-quality probabilistic predictions for all objective functions used in this case study.</p><p>The new probabilistic error model and the open-source software and web application aims to facilitate the adoption of probabilistic predictions in the hydrological modelling community, and to improve the quality of predictions and decisions that are made using those predictions. In particular, our methods can be used to achieve high-quality probabilistic predictions from hydrological models that are calibrated with a wide range of common objective functions.</p>


2018 ◽  
Vol 167 ◽  
pp. 83-91 ◽  
Author(s):  
Vine Mutyasira ◽  
Dana Hoag ◽  
Dustin Pendell ◽  
Dale T. Manning ◽  
Melaku Berhe

2014 ◽  
Vol 6 (11) ◽  
pp. 268-279 ◽  
Author(s):  
Said Ngasa Shija Dismas ◽  
Jeremy Moses Kusiluka Lughano ◽  
Wilson Chenyambuga Sebastian ◽  
Shayo Deogratias ◽  
Paul Lekule Faustin

Author(s):  
Nnyaladzi Batisani ◽  
Flora Pule-Meulenberg ◽  
Utlwang Batlang ◽  
Federica Matteoli ◽  
Nelson Tselaesele

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