STATISTICAL ANALYSIS CONCERNING BROAD BAND MEASUREMENTS OF RADIO FREQUENCY ELECTROMAGNETIC FIELDS C. Lubritto (a), A. D’Onofrio (a), A. Palmieri (a), C.

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STATISTICAL ANALYSIS CONCERNING BROAD BAND MEASUREMENTS OF RADIO FREQUENCY ELECTROMAGNETIC FIELDS C. Lubritto (a), A. D’Onofrio (a), A. Palmieri (a), C. Sabbarese (a), F. Terrasi (a), C. Montefusco (b), A. Petraglia (c), G. Pinto (c), G. Romano (c) (a) Dipartimento di Scienze Ambientali, Seconda Università di Napoli, via Vivaldi 43, Caserta (b) SINT s.r.l., Via S. Leonardo 52 G,84131 Salerno (b) SINT s.r.l., Via S. Leonardo 52 G,84131 Salerno (c) NORMAN RESEARCH s.r.l., Via S. Leonardo, Salernoc (c) NORMAN RESEARCH s.r.l., Via S. Leonardo, Salernoc

1. Introduction Electromagnetic fields (EMF) actually represents one of the most common and the fastest growing environmental factors influencing human life. The care of the public community for the so called electromagnetic pollution is continually increasing because of the booming use of mobile phones over the past decade in business, commerce and social life. Moreover the incumbent third generation mobile systems will increase the use of all communication technologies, including fax, and Internet accesses [1]. This extensive use has been accompanied by public debate about possible adverse effects on human health. In particular there are concerns related to the emission of radiofrequency radiation from the cellular phones and from base stations [2,3]. In this paper we like to focus the interest on the aspects of statistical analysis of data collected during about 1000 check measurements for electromagnetic field carried on 167 sites spread in different Italian regions and in the frequency range (.8-2GHz) used in the mobile phone domain. A database with all the relevant information has been built and then an accurate statistical analysis of the data has been carried out in order to find the most critical factors arising from the measurements.

Database description The database is built by organizing the data coming from 980 measurements of electromagnetic fields in the Radio Frequency range (RF). Detailed analysis of the database let be addressed the following questions: a) possibility to define an optimised number of “critical” points for the measurement needed and sufficient to assure reliable results, by taking into account the most important factors affecting the electromagnetic field value; b) evaluating each parameter by considering both the measurement procedures and the environmental impact; c) improving the time schedule and the time spans needed to perform the measuring activities. In particular the database fields and sub-fields chosen as important parameters in the statistical analysis are:  - type of antenna with the following details: o Azimut of the irradiation lobe (Az [degrees]); o Mechanical tilt (T [degrees]); o Maximum antenna power (P M [W]); o Transmission power (P T [W]);  - parameters characterizing the measurement points, in details: o Distance between radioelectric centre of the antenna and the ground (H [m]); o Azimut of the measurement points (Ap [degrees]); o Horizontal distance between antenna and measurement point (d [m]); o Height difference between the radioelectric centre of the antenna and the one of the used probe (DH[m]); Values of the electric field measured (E [V/m]).

Statistical analysis In Table 1. have been summarized the statistical characteristics of electric field E values: Table 1- statistical parameters evaluated for the electric field E using the 980 values of the available sample

Fig 1. Frequency distribution and cumulated relative frequency distribution of the field E in step of 0.3 V/m (class) In Figure 1. is reported the frequency distribution histogram and the cumulated relative frequency distribution of the field E in step of 0.3 V/m (class). The histograms, the average value and standard deviation values reported in Table 1 confirm that data are distributed according to a Poisson distribution curve.

Table 1 and Fig. 1 clearly show that most of measured values for E stand below the so called “attention value” of 6 V/m reported in Italian legislation and referring to zones where people live for more than 4 hours per day. In more details, out of 980 measurements, only 21, representing the 2% of the entire sample, are above the “attention value”, while 959, 98% of the sample, are below this threshold. It is worthwhile to notice that all the values, but one (22V/m), are below 20 V/m that is the “attention value” for zones where people stand for less than 4 hours per day, as reported in the same italian legislation. When considering the different parameters above discussed and entering the measurement of the electric field, it is interesting to study the possible correlations existing between them and the electric field. In particular for each couple electric field-parameter it could be found the curve that best fit the data obtained from the measurements and then calculate R (the correlation coefficient) in order to check the quality of the fit, normally performed by means of least square methods. This result, obtained in rather general conditions and for a representative set of data, confirms that electromagnetic field values related to the presence of radiobase stations do not have a strong environmental impact, at least as far as the compliance with the legal limits of electromagnetic emissions, but without any concern with the landscape aspects. Moreover it has to be stressed that all collected data are relative to measurements performed in a given time and in few points: no information can be confidently drawn on what could happen to the electromagnetic emission as function of the time and in spatial points different from the one considered.

Table 3: Coefficient of linear correlation between electric field and other measurement parameters. In Table 3. are reported the R values in the hypothesis of a linear correlation between the different couples of parameters. From the R values reported in Table. 3 it results a clear correlation between the electric field values and variables related to the distance between emitting stations and measurement points.

Summary and Conclusions In this work a statistical analysis of data collected during 1000 check measurements of electromagnetic field performed in 167 sites spread in different Italian regions in the frequency range (.8-2GHz) used in the mobile phone domain has been performed. This analysis has been carried out thanks to the implementation of a database with all the relevant information concerning the measurements. The results obtained show the high reliability of the measurements performed, both from a qualitative and a technical point of view, showing, a the same time, some peculiar difficulties of the measurement process. Moreover the results show that, for the checked SRB, the electromagnetic field values are below the Italian legal threshold. In particular only 2% of the electric field values stand above the threshold of 6V/m, which is the limit set by the DM 381/98 for the range of RF in zones frequented for more than 4 hours per day. The correlation analysis between the electric field and all the possible parameters that could affect its value have confirmed the expected dependence of the electric field from the distance between the sources and the measurement point. The actual power law dependence for the considered measurement sample has been deduced. No correlation has been found between the electric fields measured and the emitting station power values declared by the providers.

References [1] Franceschetti, Riccio, Scarfi, Sciannimanica: “Esposizione ai campi elettromagnetici”, Baldi Boringhieri 2000, and references therein; J. D. Parsone: “The Mobile Radio Propagation Channel”, Peutech Press Publishers London, and references therein; C. A. Balanis “Antenna Theory: analysis and design”: John Wiley & Sons and references thereinhttp:// [2] Organizzazione Mondiale della Sanità (2000): “Campi elettromagnetici e salute pubblica. I telefoni mobili e le loro stazioni radio base”. Promemoria N http: // // [3] Royal Society of Canada (1999): “A Review of the Potential Health Risks of Radiofrequency Fields from Wireless Telecommunication Devices”. ; Independent Expert Group on Mobile Phone (2000): “Mobile Phones and Health”. ; National Radiation Laboratory (1999): “Radiofrequency Waves from Cellular Phone Base Stations and Microwave Communication Antenna”. Information Sheet