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Soil Science Society of America Journal 67:77-80 (2003)
© 2003 Soil Science Society of America

DIVISION S-1—SOIL PHYSICS

Evaluation of a Model for Irrigation Management Under Saline Conditions

II. Salt Distribution and Rooting Pattern Effects

G. L. Fenga, A. Meirib and J. Letey*,a

a Soil and Water Science Unit, Univ. of California, Riverside, CA 92521
b Inst. of Soils, Water, and Environmental Sci., Volcani Center, ARO, P.O. Box 6, Bet Dagan, Israel

* Corresponding Author (john.letey{at}ucr.edu)


    ABSTRACT
 TOP
 ABSTRACT
 INTRODUCTION
 EXPERIMENTAL DESCRIPTION AND...
 RESULTS AND DISCUSSION
 REFERENCES
 
Increasing salinity is a significant factor affecting the future agricultural productivity in semiarid irrigated regions of the world. Computer simulation models, which can be used to evaluate the consequences of differing management strategies on crop yield and salt distribution in the soil profile, would be valuable. Simulated results from models must be compared with measured results from field experiments to establish their validity. The simulated salt distribution from the ENVIRO-GRO model were compared with measured distribution at the end of the growing season from an experiment that had treatment variables of irrigation water electrical conductivity (EC) of {cong}1.7, 4.0, 5.0, 8.0, and 10.2 dS m-1 and average irrigation intervals of 3.5, 7, 14, and 21 d. Root distribution is an input variable to the model. Therefore, a second objective of the study was to test the sensitivity of the model results to the root distribution. In general, the agreement between measured and simulated salt distributions were better for the longer than for the shorter irrigation intervals. For the shorter irrigation intervals, the measured salt concentration near the soil surface was greater than was simulated. This result is explained by the fact that the model does not separate the transpiration (T) from the evaporation (E) component of evapotranspiration (ET), and assumes that all water is lost by T. The E:T ratio would be expected to increase as the irrigation frequency increases, and E would carry salts to the soil surface. Except for nonsaline conditions with frequent irrigation, the simulated yields were increased by having a deeper root distribution. The effect of a deep root system was greater for the longer irrigation interval when the water storage capacity within the root zone becomes more important.

Abbreviations: E, evaporation component of evapotranspiration • ET, evapotranspiration • EC, electrical conductivity • T, transpiration component of evapotranspiration


    INTRODUCTION
 TOP
 ABSTRACT
 INTRODUCTION
 EXPERIMENTAL DESCRIPTION AND...
 RESULTS AND DISCUSSION
 REFERENCES
 
SALINITY is a significant factor in many irrigated, semiarid lands. The potential effects of salinity are not only on crop yield but also on factors such as salinization of lands, degrading ground and surface waters, and the underground migration of salts from salt-laden geologic strata to rivers. All of these factors should be considered in developing irrigation strategies.

Reliable models which accurately simulate the consequences of irrigation management on crop yield, salt, and water distribution in the soil profile, and the amount and concentration of water percolating below the root zone have great utility in developing optimal irrigation strategies. Cardon and Letey (1992) developed a modified van Genuchten–Hanks model to simulate crop production under various irrigation regimes including saline conditions. That model was modified by Pang and Letey (1998) to allow the plant to compensate for water stress by removing extra water from the root zone where water is not deficient and by incorporating a threshold for matric and osmotic stress below which plant growth was not affected.

Very few experiments have been conducted in which the irrigation water salinity and the amounts and timing of irrigation were included as variables. One experiment was conducted in Israel which included five levels of salt concentration in the irrigation water and four irrigation intervals (Shalhevet et al., 1986). Results from that experiment can be used to compare computer model simulation results with measured results. Feng et al. (2003) reported good agreement between the measured and simulated relative yields of a corn crop. One purpose of the present paper is to compare the simulated with the measured salt distribution in the profile at the end of a season. A second purpose is to investigate the effect of different root distributions on relative yield and salt distribution under irrigation-salinity and irrigation-interval variables. Although the model also simulates the amount and concentration of water percolating below the root zone, these data were not measured during the experiment so no evaluation of the model results can be made.


    EXPERIMENTAL DESCRIPTION AND SIMULATION PROCEDURES
 TOP
 ABSTRACT
 INTRODUCTION
 EXPERIMENTAL DESCRIPTION AND...
 RESULTS AND DISCUSSION
 REFERENCES
 
Salt distribution before and after growing sweet corn (Zea mays ‘Jubilee’) in an experiment at Gilat Agricultural Experimental Station in the northern Negev of Israel (Shalhevet et al., 1986) were used in the simulation. The salt distribution at the beginning of the experiment were used as the initial conditions in the model. Simulations and the measured salt distribution at the end of the growing season were used to compare measured and simulated results. Salt concentrations are reported in mass of salt per unit mass of soil to avoid ambiguity with soil water content. Comparable water contents would be required to report the results in solution concentrations.

The experiment was a split-plot design with five levels of ECs of irrigation water (ECi = 1.7, 4.0, 5.0, 8.0, and 10.2 dS m-1) as main treatments and four irrigation intervals (3.5, 7, 14, and 21 d) as subtreatments and three replicates. The 3.5-d treatment reports the average interval between irrigations, which varied slightly during the course of the experiment.

Prior to the initiation of the salinity and irrigation interval treatments, all plots received three uniform irrigations until 37 d after planting. The initial salt distribution in the soil profile prior to planting was quite uniform through the soil. The concentration was {cong}1.25 cmol kg-1 to a depth of {cong}90 cm and then 1.0 cmol kg-1 at greater depths. The root distribution was not measured in the experiment, so values reported by Bar Yosef (1999) from an experiment on corn in Israel was selected as being representative of the experimental situation for comparing simulated with measured results.

Four different rooting patterns were artificially selected to determine the effect of rooting pattern on simulated results in a separate study. Maximum rooting depths selected were 60 and 120 cm; and for a given maximum length, a shallower and deeper distribution were formulated (Fig. 1) . For purposes of reporting, these treatments will be identified as 60s, 60d, 120s, and 120d, where the number refers to the maximum depth of root penetration and the letter refers to whether the root distribution was more shallow (s) or deep (d). The root distribution patterns are illustrated in Fig. 1. A description of the soil properties, hydraulic function values used in the model, crop sensitivity to salinity, and matric stress values and other details of the simulation are presented in detail elsewhere (Feng et al., 2003).



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Fig. 1. Root distributions used in the simulations. The numbers in the key refer to the maximum depth of root penetration and the letters refer to whether the roots were predominantly shallow (s) or deep (d) within the depth of penetration.

 
The studies using the different root distributions were done using the experimental conditions for the 3.5-d irrigation interval, with irrigation water salinities of 1.5 and 9.5 dS m-1 and for the 14-d interval with irrigation salinity of 1.8 and 10.1 dS m-1. Additionally, simulations were conducted assuming a low initial soil salinity and low irrigation water salinity for the 3.5- and 14-d irrigation intervals. The relative yield simulations were conducted for five growing cycles, assuming no rainfall between cycles.


    RESULTS AND DISCUSSION
 TOP
 ABSTRACT
 INTRODUCTION
 EXPERIMENTAL DESCRIPTION AND...
 RESULTS AND DISCUSSION
 REFERENCES
 
The measured and simulated salt distributions at the end of the experiment are presented in Fig. 2 for a range of irrigation water salinities for the four irrigation interval treatments. Both the measured and simulated salt concentration in the soil profile increased as the irrigation water salinity increased as would be expected. A general trend in results is that for the 3.5- and 7-d irrigation intervals, the measured salt concentration near the soil surface was greater than was simulated. The agreement between the measured and the simulated salt distributions are better for the 14- and 21-d irrigation intervals.



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Fig. 2. The measured (Meas., solid symbol) and simulated (Sim., open symbol) salt distribution at the end of the growing season for irrigation water salinities (dS m-1) as specified by the numbers. The results are for irrigation intervals of (A) 3.5, (B) 7, (C) 14, and (D) 21 d.

 
The model does not separate T from E during the simulation. The input data is the potential ET x an empirically determined crop coefficient. The model does adjust the crop coefficient based on plant growth in response to water stress. Thus, the total water loss is accounted for, but in the model it is assumed that all of this water passes through the root system to the leaves. The water uptake is distributed throughout the root system rather than a portion of it being evaporated at the soil surface. The consequence of this is that E causes upward migration of water and a concentration of salts nearer the soil surface than would occur in the absence of E. The proportion of the E compared with T would be expected to be highest under the most frequent irrigation intervals and also under conditions where plant growth was reduced. Under the 14- and 21-d irrigation intervals, the soil surface would be dry a high percentage of the time and therefore, the E component relative to T would be low. Under these conditions, there is reasonably good agreement between the measured and simulated salt distribution in the profile.

Because the model allows root water uptake from nonstressed root zone to compensate for reduced water uptake from the stressed portion of the root zone, the discrepancy between the measured and simulated salt distribution in the soil profile were not reflected in the crop production results (Feng et al., 2003).

The effects of the artificially imposed root distributions on simulated relative yield of corn are summarized in Table 1. Although the simulations were conducted across a 5-yr period, only the first 2-yr results are presented, because the results in successive years were very similar to those achieved in the second year. In other words, steady state conditions had been achieved by the second growing season.


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Table 1. Root distribution effect on simulated relative yield of corn for two years and different irrigation (Irrig.) and salinity treatments.

 
Except for the nonsaline condition with frequent irrigation, where the relative yield was relatively unaffected by the root distribution, roots penetrating to 120 cm was superior to having them penetrate to 60 cm; and for a given maximum depth of penetration, having the larger fraction of the roots deeper was superior to having a larger fraction of the roots more shallow. Having roots to the 120-cm depth increases the effective water storage capacity of the soil as compared with the 60-cm rooting depth. This is particularly true when the large storage capacity is important as would occur with a long interval between irrigations. Note in Table 1 that the effect of rooting depth pattern has greater effect on the relative yield for the 14-d as compared with the 3.5-d irrigation interval.

The general results of the simulation are consistent with results reported by Timlin et al. (2001). They investigated the relationships between corn grain yield and weather over a range of soil rooting depths with and without irrigation. The grain yields from the irrigated plots were not sensitive to soil depth. However, on the nonirrigated plots, the grain yield increased with increasing soil depth.

The simulated salt distributions for the artificially imposed root distributions are presented in Fig. 3 for the field experimental treatments of 3.5-d irrigation interval and irrigation water salinities of 1.7 and 9.5 dS m-1. The main effect was to have the salt transported deeper into the soil profile with the deeper root system. This result is consistent with the expected zones of water extraction by the roots. The deeper root system would extract water at deeper depths than the shallow root system. Therefore, at irrigation the infiltrated water would move deeper into the soil profile to replace the extracted water under the deep root system. The flow of water to the deeper zones would transport salt deeper into the profile.



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Fig. 3. The simulated salt distribution at the beginning (initial) and end of the growing season for four root distributions. The numbers in the key refer to the maximum depth of root penetration and the letters refer to whether the roots were predominantly shallow (s) or deep (d) within the depth of penetration. The irrigation water salinities were (A) 1.75 dS m-1 and (B) 9.5 dS m-1.

 
In summary, comparing the measured with simulated salt distributions (Fig. 2), the model underestimates the salt in the upper part of the profile under conditions where E is considered to be a significant component of ET. This would be expected under frequent irrigation and reduced plant growth that exposes more surface for E. The agreement between measured and simulated salt profiles was reasonably good for the longer irrigation interval treatments that would be expected to have E as a small component of the total ET.

Having a deeper root system is preferable from two points of view. First, a larger water storage capacity available to plants exists with the deeper root systems, placing less importance on the timing of irrigation. Second, the deeper root system, by extracting water at the greater depths, creates a situation toward increasing the depth of salt leaching by irrigation. The rooting depth is particularly important under saline conditions. With proper irrigation timing and amount of nonsaline irrigation water, approximately equal yields can be achieved regardless of root distribution. However, when irrigating with saline waters, the rooting depth becomes more important.

Received for publication March 5, 2002.


    REFERENCES
 TOP
 ABSTRACT
 INTRODUCTION
 EXPERIMENTAL DESCRIPTION AND...
 RESULTS AND DISCUSSION
 REFERENCES
 




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This Article
Right arrow Abstract Freely available
Right arrow Figures Only
Right arrow Full Text (PDF) Free
Right arrow Alert me when this article is cited
Right arrow Alert me if a correction is posted
Services
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Right arrow Similar articles in ISI Web of Science
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Right arrow Citing Articles via HighWire
Right arrow Citing Articles via ISI Web of Science (4)
Right arrow Citing Articles via Google Scholar
Google Scholar
Right arrow Articles by Feng, G. L.
Right arrow Articles by Letey, J.
Right arrow Search for Related Content
PubMed
Right arrow Articles by Feng, G. L.
Right arrow Articles by Letey, J.
Agricola
Right arrow Articles by Feng, G. L.
Right arrow Articles by Letey, J.
Related Collections
Right arrow Irrigation
Right arrow Other Environmental Contamination
Right arrow Soil Models
Right arrow Other Models
Right arrow Root Growth


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