Introduction: Agriculture is the focus of sustainable development and food security in Morocco, contributing 14% to the national economy and its socio-economic impact depends on agro-climatic conditions and the availability of water resources. The objective of this work is to demonstrate that agriculture in Morocco, and especially in the Tadla region, is distributed according to the availability of underground water. Method: This work was carried out in the transition zone between the phosphate plateau and the plain of Tadla, a site of more than 124,000 ha. To achieve the objectives set, we used Landsat-8 OLI (Operational Land Imager) data sharpened to 15 m. The Support Vector Machine (SVM) classifications were applied to the 10-period Normalized Difference Vegetation Index (NDVI) series. Results: It is shown that agriculture in Morocco is highly dependent on irrigation. In the classified map, it can be observed that the southern region, a zone with a semi-arid climate, which generally relies on irrigation, is very developed in agriculture, whereas in the north most of the soil is bared with cereals that mainly depend on rainfall. Conclusion: The possible water shortage in the region puts food availability in Morocco at risk of inadequacy. Food security depends on the availability of water, a natural resource at risk of extinction. Therefore, strategies to reduce the risk of agricultural drought must be at the forefront of Moroccan policies.
Agriculture is an important sector in Morocco, contributing 14% of the gross domestic product (GDP). But agriculture in Morocco is also based on the availability of water resources. While water represents an insufficient resource in comparison with rapidly growing needs, the curve of water mobilization will practically cease from 2013, at a time when the population will continue to increase, at a slower pace [
In addition, Morocco experienced surpluses and balanced precipitation deficits. But since the 1980s, this balance has been broken and it has caused a strong imbalance resulting in severe drought [
Morocco’s food needs are based on national production, and this refers to the concept of food self-sufficiency [
The Tadla plain covers an area of 3600 km2 and extends approximately to the north of the High Atlas Mountains. It lies between 6˚42'21''W and 6˚16'03''W longitude and 32˚28'49''N and 32˚31'10''N latitude (
This work is based on a time series of satellite images of Landsat OLI 8. We used a set of 10 images of the study area covering the period of agricultural partner (September 2014-May 2015). This allows us to have at least one image per month for the whole farm partner.
These OLI images are calibrated radiometrically and corrected from atmospheric effects and then resampled at a spatial resolution of 15 m. The NDVI vegetation index of each image is calculated to consolidate and create a time series [
To distinguish the different cultures of the TIP, we based ourselves on their phrenological development. Thus, a time series of the NDVI vegetation index (1) is calculated from the beginning of the farm companion (September) to its end (May). This index is based on the difference in luminous energy at the level of the red and near infrared band caused by the different surfaces of the earth through the phenomenon of absorption and reflection, in particular the vegetation absorbs more than red light while reflecting much of the light in the near infrared.
The calculation of NDVI was realized using the tool “NDVI” in ENVI, specifying the input file type (Landsat OLI8) from the dropdown list and indices of the bands (red and infrared) used to the calculation (Red: 4, near IR: 5).
These vegetation indices are grouped in a single image for the extraction and comparison of the spectral profiles of the crops. Both Vector Vector Machine
(SVM) and Spectral Angle Mapper (SAM) classification algorithms are used to map crops.
with:
PIR: the pixel value in the near infrared band.
R: the pixel value in the red band.
The methods of classification are the operations of image segmentation which allows determining for each pixel of the image to its class of belonging, in function of their radiometric properties [
Support Vector Machine (SVM) is a method of supervised classification derived from the theory of the statistical learning which often gives good results of classification of complex data and noisy. It separates the classes with a surface of decision which maximizes the margin between the classes. The surface is often called the hyperplane optimal, and the data points are the closest to the hyperplane are called “vectors support”.
To perform the classification of the resulting image, we began by the choice of regions of interest while respecting the following rules:
・ The number of pixels per class must be large enough (at least 100 pixels/class);
・ For the same class regions of interest must be dispersed on the entire image, to encompass the more possible of the varieties that a type of culture can take;
・ Avoid to select areas of interest combining the shaded areas and lit even if it is the same object.
Eight classes have been selected, cereal, beetroot, alfalfa, arboricultures, another culture and TSI (field without interest).The tests of separability, based on the distance from Jeffries-Matusita, between each pair of the eight classes has shown the values of separability which vary between 1.99860747 and 2, which means that our classes are well separated one compared to the other is can be used for classified the image.
The classification of crop types is the basis of the phrenological properties that each image presents during the agricultural season. These properties are translated into a map through values that the NDVI records for a given crop in a given pixel during the selected season. The results obtained from the phrenological curves are presented in the form of a map of distribution of crops.
The map is divided into two areas. A zone whose crops are the following: the cultivation of the dominant beet with an area reached 49,242.465 ha, followed by arboriculture with an area of 749.99 ha and the cereal of 67,300 ha. Alfalfa is represented by an area of 22,874.80 ha. The dominance of beet sugar was explained by the request of COSUMAR in the region. And an area where the bare soil is the dominant area following the cultivation of cereals. In summary, it can be clearly seen that the zone in the south, a zone with a semi-arid climate, which relies on irrigation is very developed in agriculture, whereas in the north most of the soil is bared with cereals, a crop that depends on precipitation. Food security in Morocco is at risk, it depends on the availability of underground water, a natural resource in risk of extinction (
Agriculture has always had the primary role of satisfying nutritional needs and ensuring food security at the level of individuals, groups and households as well as at the regional and national levels. According to the definition adopted by the World Food Summit, “food security exists when all people, at all times, have physical and economic access to sufficient, healthy and nutritious food to meet their nutritional needs and satisfy their preferences to ensure a healthy and active lifestyle” [
is secure in a sustainable way and capable of responding to population growth and changes in eating habits. Accessibility is achieved when physical and economic access to sufficient food is jointly assured. But when agriculture depends on water availability and rainfall, there is a problem of sustainability and there is talk of vulnerability to food security.
The results of this research show that the risk of water scarcity in the study area may increase under the combined pressure of drought in the northern region of the map and the demand for irrigation in the southern region. And this highlights the problem of food insecurity in a region dependent on the agricultural sector for food and economic reasons. In this context, Tadla plain is faced with a series of challenges related to the problem of water availability in the future, with vulnerabilities that could worsen considerably in the coming decades, which have the potential to make food insecurity a national priority. All this combined with other factors of social and economic vulnerability [
Agriculture is an important sector in Morocco and especially in the region of the Plein of Tadla. But when regional food availability depends on the availability of water, insufficient resources compared with growing needs, uncertainty prevails on agriculture and therefore food security. For this reason, the risk of food inadequacy must be taken into account in all water management in both rainfed and irrigated agriculture. Strategies to reduce the risk of agricultural drought must be at the forefront of Moroccan policies.
Salahddine, D., Housni, F.E., Najine, A., Wafik, A., Aadraoui, M., Hafiane, F.Z. and del Toro, H.B. (2017) Mapping and Characterization of Agricultural Systems from Time Series of Normalized Difference Vegetation Index (NDVI) in the Northeast Area of Tadla, Morocco. Natural Resources, 8, 24-30. http://dx.doi.org/10.4236/nr.2017.81002