Effect of Furrow Irrigation Technical Parameters on Field Application Performances of Short Furrow and Yield of Onion Crop in Bako, Ethiopia

DOI : 10.17577/IJERTV9IS060893

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Effect of Furrow Irrigation Technical Parameters on Field Application Performances of Short Furrow and Yield of Onion Crop in Bako, Ethiopia

Gudeta Genemo Kore1

1Soil and Water Engineering Research Case Team, Bako Agricultural Engineering Research center, Oromia Agricultural Research Institute

Abstract: – Flow rate and Furrow length are the main irrigation technical Parameters currently affecting field application performances and management of irrigation system at farm level. Improper selection of these parameters produces an over use of water and loss in crop production. The general objective were to investigate the effect of furrow irrigation technical Parameters on field Application performances of short furrow and yield of onion crop, with specific objective of analyze the effect of flow rate and furrow length on application efficiency , storage efficiency , distribution uniformity , deep percolation ratio and onion yield . The field experiment was laid out in RCBD factorial arrangement of three levels of flow rate (0.7, 0.98 and 1.3l/s) and three levels of furrow length (25, 35 and 50m) with three replication. For the purpose of field performance evaluation Soil moisture content was determined by using gravimetric method. Field application performance parameters such as application efficiency (Ea), storage efficiency (Es), distribution uniformity (DU), deep percolation ratio (DPR) and onion yield were used for evaluation. The analysis of field application performance parameters indicated that the effect of furrow length and flow rate were highly significant (P<0.01) on all performance indicators. The minimum and maximum values for Ea, Es, DU and DPR were 53.60 and 65.87%, 78.05 and 94.98%

, 80.42 and 92.17% , 34.35% and 46.40% ,respectively. The ranges of mean yield gained from furrow length and flow rate were 14.75 to 15.96ton/ha and 13.59 to 16.94ton/ha, respectively. The effect of furrow length on yield were not significant (p<0.05). However, the flow rate showed highly significant (p<0.01) effect on yield of onion. Therefore, it is concluded that, in the utilization of fragmented farm size a 50m furrow length is suitable to 1.3 L/s flow rate for better field application performances and onion yield around the study area.

Keywords: Field Application Performance, Furrow Irrigation, Flow Rate, Technical Parameter

  1. INTRODUCTION

    Water scarcity is a growing global problem challenging sustainable development and placing a constraint on producing enough food to meet increasing food requirements. Ethiopia is also a country which has vast water resources estimated in 122 billion meters cube with an annual groundwater recharge of 28 Billion meters cube [1]. Moreover, the potentially irrigable land is 3.6 million ha. However, only about 5.6 billion meters cube of the water resource and 290,000 ha of the potentially irrigable land are utilized so far [1] and [2]. Despite Ethiopias large agricultural sector and water potential, growing human population, recurrent droughts and periodic floods, complicated with climate change that has been accompanied by severe soil and landscape degradation in some regions contributed to a situation of national food insecurity [3].

    In spite of its enormous potential to ensuring long-term food security in Ethiopia, irrigation is facing several problems. Such as inadequate water management at farm level and poor efficiency with which water resources have been used for irrigation. Inappropriate management of irrigation has contributed, not only to food insecurity but also to environmental problems including excessive water depletion, water quality reduction, water logging and salinization [4].

    Furrow irrigation, recounted to be one of the least efficient methods compared with other irrigation methods [5], is still one of the most widely used forms of surface irrigation. Despite its application efficiency remaining relatively low [6] not enough effort is being made to keep improving its management and efficiency. There is a need for basic technical parameters such as flow rate, furrow length and cut off time that easily applied to furrow irrigation system design in order to optimize for local condition [7]. Flow rate and furrow length are the main management and design parameters affecting irrigation efficiency [8]. However, proper selections of these parameters are not well practiced in the study area. The possibility of using optimum or longer furrow length in the farmers is very low. Therefore, appropriate selections of these parameters were significant element for improving the field application performances and crop yield under framers field. The main objectives of this study were to investigate the effect of furrow irrigation technical Parameters on Field application performances and yield of Onion crop around the study area.

  2. MATERIALS AND METHOD

    1. Description and Climatic characteristics of the study area

      The study area was located Bako Woreda, West Shewa Zone ,Oromia Regional State with an altitude of 1590m above sea level and lies in 9°06' N and 37°09 E Latitude and longitude has mean monthly minimum and maximum temperature in the area are 13.7oc and 28.40c respectively. Mean monthly annual dependable and effective dependable rainfall in the area were

      808.5mm and 482mm, respectively. Figure 1 below shows the monthly distributions of reference evapotranspiration (ETO) and effective dependable rainfall of the study area for 31years (1987_2017). The potential evapotranspiration of the study area calculated using the CROPWAT Model is more than the effective dependable rainfall in most of the months and in this case, rainfall is insufficient to compensate for the water lost by evapotranspiration. This indicated that most of the crops planted in these months need supplemental irrigation. The effective dependable rainfall is more than ETO during June and July, meaning that no irrigation is required during these months.

      Effective Dependable Rainfall(mm),Minimum

      and Maximum Temperature(Oc)

      Effective Dependable Rainfall(mm),Minimum

      and Maximum Temperature(Oc)

      220

      200

      180

      160

      140

      120

      100

      80

      60

      40

      20

      0

      Effective Dependable Rainfall(mm) Tmax(OC) Tmin(Oc) ETO(mm)

      Referance Evaoptraspiration(mm)

      Referance Evaoptraspiration(mm)

      160

      140

      120

      100

      80

      60

      40

      20

      0

      Monthes

      Fig 1. Monthly Distribution of Reference Evapotranspiration and Effective Dependable rain fall of study area

    2. Experimental Design and treatments

      The treatments include two factors namely furrow length and flow rate. The levels of treatments include three level of both furrow length (F1, F2, and F3) and flow rate (Q1, Q2, Q3). The furrow length was 25m, 35m and 50m. The flow rate was made by rating of 50%, 75% and 100% of the maximum non erosive flow rate. The experimental field was arranged 3×3 factorial experiments in randomized complete blocks design with three replication. Each replication had nine treatments or plots and each plot had four furrows with 2.4m width. The treatments were assigned randomly into three blocks. The block and plot spacing were 1.5m and 0.5m respectively.

      Table 1. Combinations of Experimental Treatment

      Flow rate (l/s)

      Furrow Length(m)

      F1

      F2

      F3

      Q1

      F1Q1 (T1)

      F2Q1 (T4)

      F3Q1 (T7)

      Q2

      F1Q2 (T2)

      F2Q2 (T5)

      F3Q2 (T8)

      Q3

      F1Q3 (T3)

      F2Q3 (T6)

      F3Q3 (T9)

      The maximum non-erosive flow rate was determined using equation developed by [9] .

      Qmax = (1)

      S

      Where: Qmax = Maximum flow rate, l/s

      S = Furrow slope, %

      and are coefficient of parameters based on soil group

      Table 2 . Coefficient parameters for furrow maximum flow rate

      Soil group

      (l/s)

      Heavy textured soil

      0.892

      0.937

      Medium heavy textured

      0.988

      0.55

      Medium Texture

      0.613

      0.733

      Light texture

      1.111

      0.615

      Very Light texture

      0.665

      0.548

      (Source: Hamad and Stringham 1978 or [9] )

      The experimental field had an average of furrow bed slope of 0.6% and clay loam in textural class which categorized as medium heavy textured soil group [10]. Based on these the Coefficient parameters for furrow maximum flow rate were =0.988 and =0.55. Therefore the maximum non erosive flow rate (Qmax) obtained above formula was 1.31L/s and based on this values the three levels of flow rate 50%, 75% and 100% of Qmax were 0.7 ,0.98 and 1.31L/s respectively. These flow rates were diverted to the furrows by using calibrated parshall flume having appropriate opening diameter of three inch (3"). The calibration was done by volumetric measurement. Equations obtained from field calibration was checks with the standard of

      [11] . The different head discharge relation and results were presented in figure below.

      14

      Q = 0.1404H1.5509

      12

      10

      Discharge (l/s)

      Discharge (l/s)

      8

      6

      4

      2

      0

      – 2.00 4.00 6.00 8.00 10.00 12.00 14.00 16.00 18.00 20.00

      Depth of flow in parshall flume (cm)

      Fig 2. Head Discharge Relationship of 3 inch parshall flume

    3. Determination of Crop water Requirement and Irrigation Requirement

      Crop water requirement of onion for the growing season was determined from the reference evapotranspiration and crop coefficient using Equation (1) by using FAO CROPWAT version_8 program. After then the net irrigation Requirement was determined [12]. Dependable Rain (FAO/AGLW) Formula was used to determine effective rain fall. Finally gross irrigation requirement was calculated by considering 60% of field application efficiency [13].

      ETC ETO KC

      Where: ETC = crop water requirement or crop evapo transpiration (mm/day) KC= crop coefficient (dimensionless)

      ETO= reference crop evapotranspiration (mm/day)

      (2)

    4. Soil Sample Collection and Analysis Methods

      The disturbed and undisturbed composite soil sample before planting were collected at a depth of 0-20 and 20-40 and 40-60cm. Bulk density, soil texture, PH Electrical conductivity, Field capacity and permanent wilting point were done by core sampler method, pipette method, pH meter, Electro conductivity meter, pressure plate apparatus by applying a suction of 1/3 and 15 bars to a saturated soil sample, respectively. Infiltration Characteristics of the soil of the soil was determined by using inflow out flow method [14].

    5. Determination of Field Application performance Parameters

      Application Efficiency: was determined as [15] .

      Ea =

      Zs

      × 100 (3)

      Z

      Where: Ea = Application efficiency (%)

      Zs = depth of water retained in the root zone (mm) and Z = depth of water applied to the furrow (mm)

      Storage Efficiency: was determined as [15] .

      Es

      ZS

      Zreq

      100

      (4)

      Where: Es = storage efficiency (%),

      ZS = depth of water stored in the root zone (mm) and Zreq= Water required in root zone prior to irrigation (mm)

      Distribution uniformity: was determined as [16].

      DU = Zmin × 100 (5)

      Zav

      Where: DU = distribution uniformity (%)

      Zmin = the minimum infiltrated depth (mm) and

      Zav = the mean of depths infiltrated over the furrow length (mm)

      Deep percolation ratio : was determined as [17].

      DPR=100 – Ea RR (6)

      Yield Collection

      Onion yield (ton/ha) = plot yield(kg)×10

      plot area (m2)

      (7)

    6. Statistical Analysis

    The collected data were analyzed using SAS 9.0 statistical software. For comparing means of the treatments that showed significant result, the least significant difference (LSD) test at 5% and 1% probability level was applied.

  3. RESULTS AND DISCUSSION

    1. Crop water requirements and irrigation scheduling of onion

      Crop water requirements and irrigation scheduling of onion were calculated by multiplying the reference evapotranspiration values with the onion crop coefficient [12] and computed as 438.39mm. The net crop water requirement was computed by deducting effective rainfall from ETc while Gross water requirement was computed by adopting a field application efficiency of 60% were 416.53 mm and 694.21mm , respectively.

    2. Effect of flow rate and furrow length on Field Application performances

      According to the analysis of variance (Table 1), the effect of furrow length and flow rate were highly significant at (p<0.01) on field Application performances and their interaction were significant at (p<0.05). Also the effect of flow rate were highly significant at (p<0.01) on yield of onion but the effect of furrow length and their interaction were non-significant on yield of onion.

      Table 1. Analyses of variance (ANOVA) For Field Application Performances and yield

      Field Application Performances and yield

      Source of variation

      Ea (%)

      ES (%)

      DU (%)

      DPR (%)

      Y(ton/ha)

      Furrow length(F)

      21.46**

      44.96**

      9.93**

      21.46**

      1.92ns

      Flow Rate(Q)

      48.60**

      89.08**

      30.68**

      48.66**

      11.36**

      FXQ

      3.15*

      7.1**

      5.40**

      3.01*

      0.41ns

      CV

      2.61

      1.82

      1.98

      4.04

      9.9

      LSD(0.05)

      0.53

      0.52

      0.59

      0.53

      1.49

      Where: NS Non significant, *Significant, ** Highly significant, F=Furrow length, Q =Flow rate, FXQ= Interaction of Furrow length and flow rate, Ea = Application Efficiency, ES= Storage Efficiency,

      DU= Distribution uniformity, DPR= Deep percolation ratio, y = yield

      1. Application Efficiency (Ea)

        The effect of furrow length was highly significant (p<0.01) on application efficiency (Table 1). Application efficiency has shown a decreasing trend as furrow length increased and the mean values of application efficiency were 63.28, 60.70 and 57.48% for F1, F2 and F3 furrow lengths (Table 2). This trend is in agreement with the finding of [19] and [8] .

        The effect of flow rate was highly significant (P<0.01) on application efficiency (Table 1). Application efficiency has shown an increasing trend as flow rate increased as shown in below and Mean values of application efficiency were 57.62, 59.85 and 64.00% for Q1, Q2 and Q3 flow rates, respectively (Table 2). This is might be due to faster advance time at higher flow rate, leads to make minimum deep percolation loss below root zone of onion crop contribute to increase the application effciency.

        This is consistent with trend of [19] and [20] their result associated with an increasing trend of application efficiency with increase of flow rate.

        Table 2 .Effect of flow rate and furrow length on application efficiency

        Mean of Application Efficiency (%)

        Flow rate(l/s)

        Furrow length(m)

        Q1

        Q2

        Q3

        Mean

        F1

        61.32cd

        62.87bc

        65.87a

        63.28k

        F2

        57.94e

        59.34de

        64.64b

        60.70l

        F3

        53.60f

        57.35e

        61.49cd

        57.48m

        Mean

        57.62t

        59.85r

        64.00s

        60.49

        F

        Q

        FXQ

        SEM(±)

        0.523

        0.523

        0.9

        LSD(0.05)

        0.53

        0.53

        1.58

        * Means with the same letter are not significantly different

      2. Storage Efficiency (Es)

        The effect furrow of length and flow rate were highly significant (p<0.01) on Storage efficiency (Table 1). Storage efficiency has shown an increasing trend for increase in furrow length and mean values of ES were 81.89, 88.02 and 89.13% for furrow length of F1, F2 and F3 respectively(Table 2). Similarly, [20] has got an increasing trend of Storage efficiency with increases of furrow length.

        Storage efficiency has shown decreasing trend as flow rate increase and mean values of storage efficiency were 90.38, 87.68 and 80.97 % for Q1, Q2 and Q3 flow rates respectively (Table 2). This probably due to small discharge has slow advance time which give longer intake opportunity time and lead to better infiltration rate which can improve irrigation storage efficiency. Also [18] has got decreasing trend of Storage efficiency as flow rate increases.

        Table 3. Effect of flow rate and furrow length on Storage efficiency

        Mean of Storage efficiency (%)

        Flow rate(l/s)

        Furrow length(m)

        Q1

        Q2

        Q3

        Mean

        F1

        85.59d

        82.03f

        78.05g

        81.89j

        F2

        90.58bc

        89.03c

        84.47d

        88.02k

        F3

        94.98a

        92.00b

        80.39e

        89.13l

        Mean

        90.38h

        87.68i

        80.97k

        86.35

        F

        Q

        FXQ

        SEM(±)

        0.523

        0.523

        0.908

        LSD(0.05)

        0.52

        0.52

        3.5

        * Means with the same letter are not significantly different

      3. Distribution uniformity (Du)

        The effect of furrow length and flow rate were highly significant (p<0.01) on distribution uniformity (Table 1). The mean DU with respect to furrow length was found to 90.16, 88.33 and 86.30 % for Furrow length of F1, F2 and F3 respectively and that of flow rate was 84.79 , 88.57 and 91.37 % for Q1, Q2 and Q3, respectively(Table 4). The value of DU increases as the flow rate increased regardless of furrow lengths and decrease as the furrow length increase (Table 4). The reason might be small flow rate has slow advance time and high infiltration opportunity time which contribute to lowest distribution uniformity. This is agree with the reports of [18], [7] and [20] which stated as uniformity is an increasing function of flow rate and a decreasing function furrow length.

        Table 4 . Effect of flow rate and furrow length on distribution uniformity

        Mean of Distribution uniformity (%)

        Flow rate(l/s)

        Furrow length(m)

        Q1

        Q2

        Q3

        Mean

        F1

        87.89bcde

        90.41abc

        92.17a

        90.16m

        F2

        86.06e

        87.83de

        91.11abcd

        88.33k

        F3

        80.42f

        87.49cde

        90.85ab

        86.30n

        Mean

        84.79g

        88.57h

        91.37i

        88.3

        F

        Q

        FXQ

        SEM(±)

        0.58

        0.58

        1.007

        LSD(0.05)

        0.59

        0.59

        1.79

        • Means with the same letter are not significantly different

      4. Deep percolation Ratio (DPR)

        The effect of furrow length and flow rate were highly significant at (p<0.01) on deep percolation ratio (Table 1). DPR increased as the furrow length increase and mean of DPR with respect to furrow length was found to be 36.72, 39.29 and 42.52% for furrow length of F1 , F2 and F3, Respectively(Table 5). This is congruent to the general principle [22] . DPR has shown decreasing trend as flow rate increases and mean value of DPR were 42.55, 40.08, and 36.07% for Q1, Q2 and Q3 flow rate(Table 5). This might be due to small flow rate has slow advance time on longer furrow length takes longer infiltrated opportunity time that could provide higher deep percolation ratio. Similarly [18] and [20] has got decreasing trend of deep percolation ratio as flow rate increases.

        Table 5. Effects of flow rate and furrow length on deep percolation ratio

        Mean of Deep percolation ratio (%)

        Flow rate(l/s)

        Furrow length(m)

        Q1

        Q2

        Q3

        Mean

        F1

        38.68cd

        37.13de

        34.35f

        36.72j

        F2

        42.57b

        40.46bc

        35.36ef

        39.29k

        F3

        46.40a

        42.65b

        38.51cd

        42.52m

        Mean

        42.55h

        40.08j

        36.07k

        38.51

        F

        Q

        FXQ

        SEM(±)

        0.53

        0.53

        0.92

        LSD(0.05)

        0.53

        0.53

        1.58

        • Means with the same letter are not significantly different

    3. Effect of Flow Rate and Furrow Length on Yield of Onion

    The effect of flow rate on yield was highly significant (p<0.01) But the effect of furrow length and its interaction with flow rate could not show any significant effect (P<0.05) on the onion yield (Table 1). The mean of onion yield obtained were 13.59,

    14.95 and 19.61 ton/ha for Q1, Q2 and Q3 flow rate, respectively (Table 6). The better yield was obtained at higher flow rate and increases as flow rate increases (Table 6). This might be due to greater performance of application efficiency and distribution uniformity on higher flow rate. This report agreed with the trend of [23] and [24].

    The effect of furrow length on yield of onion could not show any significant effect (P<0.05) on the onion yield (Table 1). The Minimum and maximum onion yield obtained from the furrow length F1 (14.75 ton/ha) and F3 (15.96 ton/ha) as shown Table 6. In fact as irrigation is more uniform and meets crop water requirements, the crop production increases. This indicates an increase in crop yield is linked with water distribution uniformity rather than increases of furrow length. Similar trend were reported with [18] and [20] their study showed there was no statistically significance difference of yield of crop except flow rate.

    Table 6. Effect of Flow Rate and Furrow Length on Yield of Onion

    Flow Rate(l/s)

    Yield ( ton/ha)

    Furrow Length(m)

    Yield (ton/ha)

    Q1

    13.59h

    F1

    14.75b

    Q2

    14.95h

    F2

    14.77b

    Q3

    19.61g

    F3

    15.96b

    SEM(±)

    0.500

    SEM(±)

    0.500

    LSD(0.05)

    1.49

    LSD(0.05)

    1.49

    * Means with the same letter are not significantly different

  4. CONCLUSIONS AND RECOMMENDATION

    Furrow irrigation is not only the primary consumer of water but it is also the most inefficient user. Considering this issues, a study was conducted to evaluate effect of Furrow Irrigation Technical Parameters on Field Application performances and yield of Onion Crop under small scale farmers condition.

    Results of the Field Application performances showed that the effect of furrow lengths and flow rates on application efficiency was highly significant (p<0.01). The best result of 65.87% was achieved for treatment combination of 1.3 l/s flow rate (Q3) and 25m furrow length (F1) and the least 53.60% for treatment combination of 0.7l/s (Q1) and 50m furrow length (F3).

    The effects of furrow length and flow rate on Storage efficiency was highly significant (p<0.01). The highest value of storage efficiency is formed 94.98% for treatment combination of 50m furrow length (F3) and 0.7l/s flow rate (Q1) and the lowest value of 78.05% for treatment combination of 25m furrow length (F1) and 1.3l/s flow rate (Q3).

    The effect of furrow lengths and flow rates on Distribution uniformity was highly significant (p<0.01). The highest value of distribution uniformity of 92.17% for treatment combination of 25m furrow length (F1) and 1.3l/s flow rate (Q3) and the lowest value of 80.42% for treatment combination of 50m furrow length (F3) and 0.7l/s flow rate (Q3).

    Similarly, the effects of both furrow length and flow rates on Deep percolation ratio was highly significant (p<0.01). The maximum deep percolation losses 46.40% was observed in treatment combination of 0.7l/s flow rate (Q1)and 50m furrow length(F3) while the least value of deep percolation was 34.35% for treatment combination of 25m furrow length (F1) with

      1. l/s flow rate(Q3). The effect of furrow length on yield of onion was not significant (p<0.05). However, the flow rate showed highly significant (p<0.01) effect on yield of onion. The best onion yield was obtained at Q3 which gave 19.61ton/ha.

        In this study, the use of short furrow length was the major contributor of water loss either deep percolation or surface run off and reduced crop yield. Hence, in the utilization of fragmented farm size, a 50m furrow length is suitable to use 1.3l/s flow rate field application performances and onion yield.

        ACKNOWLEDGEMENTS

        The authors would like to acknowledge Oromia Agricultural Research Institute providing the required budget to conduct the experiment. Besides, I would like to thanks the Soil laboratory technicians of Oromia Water Works Design and Supervision Enterprise, Bako and Holota Agricultural Research Center for their effective and enthusiastic work in soil analysis.

  5. REFERENCES

      1. Ministry of Water Resources, Irrigation and Drainage Projects in Ethiopia. 2010.

      2. Food and Agriculture Organization of the United Nations , Irrigation in Africa in Figure, AQUASTAT Survey. Rome, Italy. 2005.

      3. FAO (Food and Agricultural organization). The State of Food Insecurity in the World : How Does International Price Volatility Affect Domestic Economies a Food Security? ISBN 978-92-5-106927-1, FAO, Rome, 2011.

      4. Akinbile , Christopher O. and Mohd S.Yusoff. , Environmental Impact of Leachate Pollution on Groundwater Supplies in Akure, Nigeria.

        International Journal of Environmental Science and Development. 2(1), 2011.

      5. Burt, C.M., Clemmens, A.J., Strelkoff, T.S., Solomon, K.H., Bliesner, R.D., Hardy, L.A., Howell, T.A., Eisenhauer, D. E., Irrigation performance measures: Efficiency and uniformity. Journal of Irrigation and Drainage Engineering 123: 423-442, 1997.

      6. Ampas, V. and E. Baltas., Optimization of the furrow irrigation efficiency. Global NEST Journal 11(4), 566-574, 2009.

      7. Di Wu, Jingyuan Xue, Xiaodong Bo, Weichao Meng, Youjie Wu and Taisheng Du., Simulation of Irrigation Uniformity and Optimization of Irrigation Technical Parameters Based On the SIRMOD Model under Alternate Furrow Irrigation . Irrig. and Drain. 66: 478491, 2017.

      8. Eldeiry, A., Garcia, L.A, El-Zaher, A.S, and Kiwan, M.E., Furrow irrigation system design for clay soils in arid regions. Appl. Eng. Agric. 21:411-420, 2005.

      9. Hamad, N. S., and Stringham, G. E., Maximum non-erosive furrow irrigation stream size. Journal of Irrigation and Drainage Division. American Society of Agricultural Engineers, 104: 275-279, 1978.

      10. FAO(Food and Agricultural Organization). Manual for the Design and Construction of Water Harvesting Schemes for Plant Production. Rome. 1991.

      11. Skogerboe, G. V., M. L. Hyatt, J. D. England and J. R. Johnson. , Design and calibration of open channel flow measurement structures, Part 2 Parshall flumes. Utah State Univ. (1967).

      12. Allen, R., Pereira, L.A., Raes, D. and Smith, M. , Crop evapotranspiration. Irrigation and Drainage Paper No. 56. FAO. Rome, 1998.

      13. FAO (Food and Agricultural organization). Irrigation manual: planning, development, monitoring and evaluation of irrigated agriculture with farmers participation. 2(7): FAO-SAFR. Harare, Zimbabwe, 2002a.

      14. Elliott, R.L. and Walker, W.R. , Field evaluation of furrow infiltration and advance function. Transaction of the ASAE, 25(2):396-400, 1982.

      15. Assefa S, Kedir Y, Alamirew, T., Effect of slopes, furrow lengths and inflow rates on irrigation performances and yield of sugarcane plantation at Metehara, Ethiopia. Irrigation drainage sys eng, 6: 179, 2017.

      16. Guirguis, A. E., Aboukarima, A. M., El Marazky, M. S., and Egela, M. I. , Sunflower Crop Response to Furrow irrigation Flow rate and Tillage.

        Irrigation and Drainage. Misir Journal of Agricultural Engineering. 25(1): 38-57, 2008.

      17. Tefera T, Kannan K, and Hordofa T., Effect of Furrow Length and Flow Rate on Irrigation Performances and Yield of Maize. International Journal of Engineering Research & Technology. Vol. 5 Issue 04, 2016.

      18. Holzapfel, E.A., M.A. Mariño, and J.Chávez-Morales., Performance irrigation parameters and their relationship to surface-irrigation design variables and yield. Agr. Water Manage. 10:159-174, 1985.

      19. Feyen, J. and D. Zerihun., Assessment of the performance of border and furrow irrigation systems and the relationship between performance indicators and system variables. Agricultural Water Management 40, 353-365, 1999.

      20. Eduardo A. Holzapfel, Carlos L, Migue A. Mariño, Jerónimo P, José L. Arumí, and Max B., Furrow Irrigation Management and Design Criteria Usig Efficiency Parameters and Simulation Models. Chilean Journal of Agricultural Research 70(2):287-296, 2010.

      21. Eshetu S , Zerihun and Dawit., Effect of furrow length and flow rate on the performance of short-furrows used to irrigate potatoes in Gojam , Ethiopia. International Agricultural Engineering Journal. 18. 53-63, 2009.

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