Electricity Use Characteristics of Tertiary Institutions in Nigeria: A Case Study of Ramat Polytechnic Maiduguri, Borno State

DOI : 10.17577/IJERTV4IS120593

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Electricity Use Characteristics of Tertiary Institutions in Nigeria: A Case Study of Ramat Polytechnic Maiduguri, Borno State

M. B. Maina

Centre for Entrepreneurships and Enterprise Development University of Maiduguri

Bama – Maiduguri Road, Maiduguri, Nigeria

G. M. Ngala,

Department of Mechanical Engineering University of Maiduguri

Bama – Maiduguri Road, Maiduguri, Nigeria

Muhammad Shuwa

3Centre for Entrepreneurships and Enterprise Development University of Maiduguri

Bama – Maiduguri Road, Maiduguri, Nigeria

Abstract–Electricity consumption characteristics of all the buildings in Ramat Polytechnic were investigated. The consumption patterns showed distinct seasonal variation, indicating peek electrical demands during the hot, humid summer months from March June due to significant air conditioning requirements. Monthly electricity consumption data were gathered and analyzed. Results show an average annual electricity consumption of 1,445,448 kWh/Annum, and an average energy used index of 217.00 kWh/Student/Annum. The energy end users in Ramat Polytechnic are air conditioning, electrical appliances and lighting in which the energy use is 39.5%, 40.5% and 20%, annually respectively.

Keywords: Institution, Energy Use Characteristics, Regression Model

1.0 INTRODUCTION

Like any other institution, energy utilization in Ramat Polytechnic, Maiduguri Borno State (Nigeria) consumes a lot of energy daily, obviously due to the large number of buildings and facilities in the institutions. Measures are generally not taken in order to conserve the energy in this environment. This is evident in the poor maintenance culture which is one of the maladies in Nigeria. Usually a lot of energy is wasted everyday unnecessarily due to negligence or ignorance. The polytechnic will be saving a lot of money monthly if measures are taken to conserve the energy and use it effectively. This energy efficiency program if developed will help the school redirect utility cost savings back into educational resources, and to improve the learning environment [2].

While so many interpret the swift growth in third world energy consumption as a sign of progress, at times the opposite may be true-development maybe derailed if the energy sector continues on its current trajectory, Imports of energy supplies and equipment are expensive, and their costs contribute to the underlying debt and foreign exchange problems that plague developing countries[14]. Growth in energy use also increases environmental and health problems [13]. Put simply, the third world needs

more energy to provide goods and services to growing population, but, for economic and countries environmental reasons, these nations cannot rely simply on expanding supplies as they have in the past. [8].

It is clear that growth in developing countries use of oil, coal and other sources of energy, fuelled largely by speedy industrialization and urbanization, has been rapid. Since 1980 alone, these nations-home to 77% of the worlds population-have nearly tripled energy use at a time when it increased in industrial countries by only 21%. Energy use grew much faster than population and even quicker than economic growth.

Despite the increase, people in developing countries use just one ninth as much commercial energy on average as those in industrial countries (see table 1). Per capita consumption, though, can be a misleading indicator of economic or social well being: the service that energy provides is important; the actual amount used is not. A better, though still not exact measure is to gauge energy use by the amount of goods and services provided.

Table 1: World Commercial Energy Consumption 1980 and 2002 [11]

Region

1980

2000

Energy consumption (exajoules)

Per Capita (giga joules)

per person

Energy consumption (exajoules)

Per Capita (giga joules)

per person

Developing

countries

30

12

81

21

Latin

America

8

26

16

37

Asia

19

10

59

20

Africa

4

10

9

14

Industrial countries

129

180

154

185

Centrally

planned economies

44

120

71

167

World

203

55

310

59

Energy policies in developing countries have largely been dictated by the choices- and needs-of industrial countries. Foremost is the thirst for oil, which has led multinational companies to search the globe for new supplies and to encourage developing countries to export it for foreign exchange [19]. Due to oils convenience in transportation and storage, most developing countries have also followed the path of developed countries and used oil to fuel industry and transport, as well as for cooking, lighting, heating and production of electricity[17][15]. But while a few nations have greatly helped their balance sheets through these exports, most face a continual drain on scarce foreign exchange as they import oil, a drain that siphons resources away from development. Foreign debt loads-totaling some

$1.35 trillion at the start of 1992-also have an oil connection.

In much of the Third World, government-owned companies are deeply in debt from electric power construction programmes. An average of 25 percent of the dollars developing-country governments paid to creditors in the eighties went to pay for past energy projects [12]. At the same time, in an effort to boost economic growth, stem inflation, or simply popular support, governments slashed electricity prices, with tariffs dropping from an average of 5.8c a kilowatt-hour in 1983 to 3.8c by 1988. Overall, consumers in developing countries pay just 60 percent of the cost of producing electricity.

Put simply, many utilities are not earning enough money, even to cover their monthly bills, much less pay back foreign banks. Yet many developing countries still face shortage of electricity.

To close the generating gap, electric utilities throughout the developing world are building power plants as fast as they can. Plans call for spending some $100 billion annually, including $40 billion in foreign exchange, on new power plants and transmission lines through the nineties, according to the World Bank. For many utilities, acting on these plans, will be impossible. The inability of utilities to pay their existing debt has reduced the willingness of private banks to lend them money. Third Word utilities will be lucky to borrow half the $10 billion a year the Bank says are needed. Internal capital markets are also unlikely to make up the rest, given current financial problems [8].

Lahti Declaration on the promotion of energy efficiency and renewable energy through energy auditing which was made by representatives from 39 countries and 8 international organizations, having met at the International Energy Audit Conference in Lahti, Finland. 11th -13th September, 2006, is committed to intensify their work to promote energy efficiency and the use of renewable energy in their counties and organizations. Among many statements declared:

  1. They underline that energy auditing procedures, where specialists systematically analyze the energy use of buildings and production processes and make proposals for cost-effective energy efficiency improvements, are key methods in finding the most effective measures to improve energy efficiency. The promotion of the use of renewable energy sources can and should also be a natural part of energy auditing.

  2. They encourage governments, in cooperation with the private sector, to create and further develop their own energy audit programmes or activities as part of their energy efficiency programmes, and in so doing to make effective use of international experiences and best practices. They should be complemented by awareness raising campaigns, targeting energy users. In addition self-auditing tools should be developed and made available for energy consumers.

  3. They agree to share experiences on existing energy audit methodologies and best practices with the aim to improve and elaborate the effectiveness and quality of commercially available energy auditing services.

  4. They recognize that improving energy efficiency and promoting the use of renewable energy requires the implementation of audit results through investments and other measures. Therefore they agree on the need to enhance the availability of versatile and innovative financing mechanisms such as carbon financing, partial risk guarantees as well as energy performance contracting offered by Energy Service Companies.

  5. They recognize that government policies have a significant impact on energy efficiency and the use of renewable energy sources. This is also the case with regard to the development of energy auditing activities, as demonstrated in several countries. Experience has shown that successful actions for initiating and scaling up these activities include: (i) creating supportive policy, legal and institutional frameworks as well as market-based incentives, (ii) securing public sector commitment, (iii) promoting private sector involvement and (iv) providing access to funding, by stimulating financial sector interest in energy efficiency and renewable energy investments.

  6. They emphasized the need for enhanced international co-operation to help developing countries to: (i) strengthen national policy frameworks and integrate energy efficiency and renewable energy use into national sustainable energy strategies and (ii) enhance national capacity for energy auditing and for implementing cost-effective measures proposed by audits. This will require: (a) making technical assistance for energy auditing as well as financial products accessible to developing countries and (b) disseminating more widely information, knowledge and best practices that support accelerated market development of energy efficiency and renewable energy.

  7. Energy Audit Programme (IEAP) could be an effective step to develop and expand global energy audit activities building on existing energy efficiency co- operation programmes. Among the objectives would be to develop local know-how in partner countries and markets to facilitate and establish new and expanded energy auditing business activities [12].

It is in the light of the above declaration that the Department of mechanical Engineering is motivated to pursue as a matter of urgency the enhancement of national capacity for energy auditing and for implementing cost-

effective measures proposed by audits. Various energy audit studies are now been carried out to systematically analyze the energy use of buildings and production processes and make proposals for cost- effective energy efficiency improvements. This work is one of such studies.

Energy used Index (EUI) =

ELECTRICALCONSUMPTION (KWH )

NUMBEROFSTUDENTS

462482

2.0 MATERIALS AND METHODS

The first stage in this study was the data collection phase,

EUI =

4169

=110.93 (see table 2 below)

in which a meeting was established with the management and all key operating personnel, and they were briefed over the audit objectives, scope of work and description of scheduled project activities. An energy audit questionnaire and check list was drawn to acquire data by interviews and physical checks. The monthly energy billing data and the supporting building information obtained were used to construct various types of electricity use profiles, comparison tables and corresponding correlation plots [2]. In examining further the measured energy consumption data for building stock, different energy use characteristics and patterns were established[7]. In the investigation and evaluation of building energy use, different categories of loads were considered. The first category is base load, which is defined as non-weather related energy use.

Typical examples are artificial lighting, office equipment, and other electrical appliances. The second category is energy used in the air conditioning systems. This requires the determination of how much energy is used for cooling by such systems. The third category is occupancy related energy consumption, which is defined as the quantity of the energy consumed in a building during normal operating hours [1] [3].

In administrative office buildings, the normal operating schedule is eight hour working day from 8.00a.m. – 4.00p.m., five days per week while for lecture halls, staff office, workshops and laboratories the working hours are not easily defined [2] [5].

Fourthly, the non-occupancy related consumption is the energy consumed outside the normal building operating times. It is not uncommon that many office building keep some of the building services functional after working hours in order to maintain certain basic operations and cater for security lights and some other facilities [18].

All data were analyzed to identify energy conservation measures (ECMs), which when implemented, will make the energy usage more efficient, less expensive and/or more environmentally friendly. Also the following analysis would be performed:

A total of seven years (2004-2010) electricity consumption data was collected and analyzed. In all the buildings, the total electricity consumption will vary slightly from one year to another, due mainly to the variations in building used and operations, especially occasional overtime works. To simplify the analysis, the consumption data was averaged over the seven year period. Energy used per student (also known as energy utilization index) is used to compare the energy intensity among different years.

Table 2: Energy Utilization Index for Ramat Polytechnic

Year

Number of students

Consumption (kWh/Annum)

Energy use index (kWh/person/annum)

2004

4170

462482

110.93

2005

5260

1404929

267.15

2006

6610

1817980

275.12

2007

7110

1728138

243.06

2008

7630

1957093

256.40

2009

7580

1060315

138.86

2010

7426

1687199

227.26

The amount of energy use in an office building depends on many factors. Key factors include the original building envelope design, operation efficiency of the ventilation and air conditioning systems, fresh air load for maintaining the indoor air quality required, types of lamps and their efficacy, internal plug loads (example, office equipment), special equipment, which require special environmental control, and the building operation and maintenance [10][16]. The first step in breakdown of energy use is to establish a list of the major services or end-users [9]. The totals of major services or electrical end-users were identified using the following measures.

Regression analysis examines the relation of a dependent variable (response variable) to specified independent variables (predictors) [4]. The mathematical model of their relationship is the regression equation. The dependent variable is modeled as a random variable because of uncertainty as to its value, given values of the independent variables. A regression equation contains estimates of one or more unknown regression parameters (constants), which quantitatively link the dependent and independent variables. The parameters are estimated from given data. In practical applications, data could come from any combination of public or private sources [6]. In this analysis the dependent variable is the electrical consumption while the cooling degree- day is the independent variable. Annual electrical consumption and fuel consumption were computed [9].

In the institution, the monthly electricity consumption data is expected to show distinct variations. The linear regression technique was used to relate these distinct variations. The regression techniques decomposes the electricity used into three parts, namely a non-weather dependent component or intercept, a weather dependent component consisting of cooling slope and the number of monthly degree days determined for a particular balance or based temperature (Tbase) such that

E = a + b x CDD ————————-(1)

Where: E = Monthly electricity use (KWH), a Intercept (KWh), b Cooling slope (KWhJ°C), CDD seven year (2004

-2010) average monthly cooling degree days (°C).

The constant a can be considered as the base load, such as lighting and office equipment, which are weather independent. The second term b x CDD can then be regarded as the weather sensitive load, like ventilation and air conditioning, and the coefficient b is the slope of the regression line that indicates the likely variations in ventilation and air conditioning load as a result of per °C change in the cooling degree days. The is the temperature above which cooling will be required and is a function of the indoor design temperature, the thermal characteristics of building envelope design and the magnitude of the various external and internal heat gains such as solar radiation, electric lighting, people and office equipment [9].

The output of the regression analysis shows that for most years the fitness of the models is not as expected. This is because the buildings are not fully air-conditioned and also due to acute shortage of light mostly when it is needed. In the analysis the dependent variable was the electrical consumption while the cooling degree-day (CDD) was the independent variable. But the results show that part of the consumptions goes to the air-conditioning while part goes to the lighting and or office equipments. In the analysis the constant a is taken as the non weather related consumption while b X CDD is taken as the weather related consumption.

For the year 2000 Excel is used to calculate MBE and RMSE as follows

Table 3: Sample Calculation for MBE and RMSE

MBE 2000

Y

Odd

X

x-y

(x-y)-2

33.678

8

38.54017

4.86217

23.6407

33.234

7

35.83349

-240051

5.762448

45.554

10

43.95353

-1.60047

2.561504

47.684

11

46.66021

-1.02379

1.048146

49.1

12.5

50.72023

1.62023

2.6225145

48.9

7

35.83349

-13.0665

170.7337

38.3

7.5

37.18683

-1.11317

1.239147

38.8

6

33.12681

-0.67319

0.453185

35

7.5

37.18683

2.18683

4.782225

34.9

8

38.54017

3.64017

13.25084

29.876

6

33.12681

3.25081

10.56777

27.456

5.5

31.77347

4.31747

18.64055

4E 05

255.3053

4E 05

3.0 RESULTS AND DISCUSSION

The energy carriers used in Ramat Polytechnic are Electricity from national grid and Automotive Gas Oil (AGO). Results show an average annual consumption of 1445448 kWh of electricity and an annual average of 11093.14 143 liters of AGO, which is equivalent to 111085.47 kWh. The energy end users in Ramat Polytechnic are air conditioning, electrical appliances and lighting in which the energy use is 39.5%, 40.5% and 20%, annually respectively.

Table 4: Summary of Regression Analysis Results for Year 2004 to year 2010

Year

A

b

R2

MBE (MWh)

RMSE (MWh)

2004

6.88673

2.70668

0.59

3.3333E-06

4.61

2005

197.3480

-10.4135

0.60

-0.000146

14.49

2006

21.97997

16.27456

0.62

1.06581E-14

22.0

2007

40.79943

11.57519

0.64

4.08333E-05

19.1

2008

– 5.96837

17.95322

0.50

3.5E-05

30.8

2009

200.4909

-11.7007

0.64

0.005416667

17.1

2010

254.6462

-13.0339

0.59

0.037583333

19.5

The mean bias error provides information on the long term performance of the modeled regression equation. A positive MBE indicates that the predicted annual electricity consumption is higher than the actual consumption and vice versa, and the RMSE is a measure of how close the predicted monthly profile is to the actual one based on the monthly electricity bills. It is worth noting that over estimation in an individual observation can be offset by under estimation in a separate observation. The MBE and RMSE determined for the seven years are also shown in table 4. It can be seen that the MBE was very small, whereas the RMSE ranged from 4.6l year 2004 to 30.8 year 2008.

This suggests that the regression models for individual buildings can give very accurate indications of the annual electricity use, but the monthly estimates may differ from the actual consumption by a few percents. The coefficients a and b correspond to the weather independent and weather dependent components of the electricity consumption and are affected by the building and building

services designs. It was found that the internal load (that is, lighting and equipment) and building envelope load (that

MBE =

12

12

255.0353 = 4.61

= 3.33333E 06 and RMSE =

is, heat gain through the walls, windows and roofs) showed good correlations with the weather independent and weather dependent componets, respectively. For the regression of consumption against CDD and number of

Table 4 shows a summary of the regression analysis results for the seven years. It can be seen that the coefficient of determination (R2) varies from 0.50 for year 2008 to 0.64 for year 2007 and year 2009. The average R2 for the seven years is 0.60, indicating a strong correlation between electricity use and the corresponding CDD.

students from the year 2004 to the year 2010 is E = 3199270 – 625302CDD + 555. 685 STUDENTS, where E

is the electrical consumption in kWh, CDD is the cooling degree day and STUDENTS is the number of students.

Table 5: Electrical Consumption for Ramat Polytechnic Maiduguri, Borno State

2004(kwh)

2005(kwh)

2006(kwh)

2007(kwh)

2008(kwh)

2009(kwh)

2010(kwh)

Jan

33678

130600

90000

62720

95000

99082

138700

Feb

38234

107300

136400

131570

115256

95741

178139

Mar

45554

109000

140000

135570

120689

55345

101487

Apr

47684

109600

165340

137020

175564

41111

98253

May

49100

65400

188560

140729

206987

47269

99897

Jun

48900

83600

198400

155200

210340

65979

135325

Jul

38300

112400

185400

160000

220304

85000

142600

Aug

33800

133529

122800

165199

200750

115564

169100

Sep

35000

142700

181300

171298

187968

95489

197500

Oct

34900

140300

177100

182391

175635

113965

119700

Nov

29876

135300

141500

174210

149600

130539

149900

Dec

27456

135200

91180

112231

99000

115231

156598

Total

462482

1404929

1817980

1728138

1957093

1060315

1687199

The above table shows distinct seasonal variations. Even though the variation is not in a regular pattern but the consumption patterns showed distinct seasonal variation, indicating peak electrical demands during the hot, humid summer months from March to June, due to significant air conditioning requirements. And the irregular variation in the consumption is due to irregular supply of electricity in Nigeria [11].

Table 6: Cooling Degree Days for Maiduguri, Borno State

CDD FOR RAMAT POLYTECHNIC, MAIDUGURI,

BORNO STATE

2004

2005

2006

2007

2008

2009

2010

Jan

8

5.5

5

3.5

8.5

6.5

8.5

Feb

7

8

8

6.5

8

8.5

6.5

Mar

7

9.5

9

10

10

10.5

9.5

Apr

7.5

8

7.5

9.5

10

9.5

8.5

May

6

7 .

5

7.5

10.5

8.5

8

Jun

7.5

7.5

8

9.5

9.5

10.5

8

Jul

10

9.5

8

10

5.5

11

11

Aug

11

10

10.5

10

9.5

13

10.5

Sep

12.5

10

11

10.5

12

12

10.5

Oct

8

7

8.5

11

11

10.5

11.5

Nov

6

5.5

7.5

11.5

11

7.5

7

Dec

5.5

5

5

7.5

7.5

7

5.5

4.0 CONCLUSSION

Electricity consumption characteristics of all the buildings at the main campus of Ramat Polytechnic, Maiduguri were investigated. The consumption patterns showed distinct seasonal variation, indicating peak electrical demands during the hot, humid summer months from March to June, due to significant air conditioning requirements. Based on the average monthly electricity use data, the annual electricity use per student per annum was found to be

216.97 kWh. The difference in electricity use per student per annum will be expected mainly due to the variation in lighting and equipment load density and variation in the students population.

Detailed energy audits and surveys of the buildings and building services were conducted to obtain a breakdown of electricity use by the three major energy end users in Ramat Polytechnic, air conditioning, lighting and electrical equipment. The percentage energy consumed annually by the three major energy end users is obtained to be 39.5%, 40.5% and 20% respectively.

Based on the conclusion of this study, the following recommendations are made for the existing buildings of Ramat Polytechnic as well as for institutions of similar status. That the management should provide a means of keeping up-to-date record of load demand of all existing electrical appliances and total monthly consumption. That meters should be installed in each building so that individual consumption can be determined and solar energy utilization should be introduced due to its availability in the study area (Maiduguri) being the most appropriate alternative/renewable energy source accessible.

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