1. Introduction
Boundary layer ingestion (BLI) is a promising approach to improve propulsive efficiency in order to increase overall aircraft efficiency [
1]. A BLI aircraft configuration consists of engines attached to the wings or the fuselage in a such way that the boundary layer of the aircraft surface is ingested into the propulsor. Due to the resulting lower inflow momentum, the propulsive efficiency is increased. The boundary layer, however, also imposes inhomogeneous inflow conditions to the engine fans. Their impact is to be quantified in order to calculate the overall power saving of BLI.
This study is part of comprehensive efforts to assess the fan reaction to BLI-induced inflow distortions in the scope of overall BLI performance evaluation. Previous studies either used costly CFD simulations, or simplified, averaged engine inflow conditions for that purpose, e.g., [
2,
3] both considered a Mach number averaged over the concerned boundary layer height to assess the performance of fuselage mounted engines.
The overall goal of the present study is to build a cost-efficient, simplified model based on a parallel compressor model (PCM) that is able to predict the fan efficiency for varying engine dimensions, flight operating points, and inflow conditions, for fast design space exploration. This represents a compromise between accuracy and computational cost compared to inflow averaging or to higher fidelity methods. The present study extends an existing PCM model by introducing radial segmentation, in order to model a fuselage tail fan, which is exposed to a full annular distortion. To the authors knowledge, thus far no studies employing PCM models for fuselage engine performance assessment exist.
The structure of the paper is outlined as follows. First, in
Section 2 we introduce the basics of boundary layer ingestion, its advantages and disadvantages, as well as the BLI aircraft design considered in this study. Subsequently, we present parallel compressor modeling in
Section 3 and discuss the limitations of that approach. We then outline the radial segmentation approach pursued in the current study. Furthermore, the employed boundary layer data as well as the reference flight scenario are described. Finally, we discuss the resulting fan efficiency and overall BLI power saving.
2. Boundary Layer Ingestion
In the following, we describe the main concept of BLI and a method for BLI power saving quantification.
The thrust
F of an idealized jet engine with uniform velocities
u and mass-flow
can be written as
if the bleed and fuel mass-flow are disregarded. In accordance with the common SAE standard [
4], the subscripts 0, 9 refer to the condition upstream of the intake and at the nozzle exit, respectively. The propulsive power
P can then be determined by
The insertion of Equation (
1) into Equation (
2) yields a linear dependency from the inflow velocity for the propulsive power, if the thrust and mass flow are considered fixed. This relation is depicted in
Figure 1.
For a given flight scenario, the power saving due to boundary layer ingestion can be calculated by comparing the BLI engine to a conventional engine fulfilling the same requirements, e.g., delivering the same thrust. We therefore introduce the power saving coefficient (PSC) from [
1] as
Engine configurations can also be compared by their thrust specific fuel consumption, which is, at constant thrust, proportional to the difference in absolute total enthalpy over the engine
. A corresponding power saving coefficient can be defined as
As BLI is a novel technology in aviation, its practical implementation is subject to ongoing research. Evaluating the effects is especially difficult, since it features embedding engines with the aircraft structure, making the treatment of complex systems that include interactions between airframe and engines inevitable [
5]. In contrary to the explained power saving benefit, BLI also comes with drawbacks.
First, depending on the aircraft and the engine integration concept, BLI introduces an inlet distortion to the fan, resulting in efficiency losses. This is the main subject of this publication and will be discussed in more detail following the next paragraph. Furthermore, in case of asymmetric distortion, the non-uniform inlet flow introduces unsteady blade loading, which can result in additional fan noise due to vibration [
6]. Slow boundary layer flow is also more prone to separate in the intake diffusor [
7].
On the other hand, when mounting BLI engines on the wings or on a Blended Wing Body fuselage, engine noise is dampened by the aircraft structure [
8]. Additionally, it results in a beneficially lower thrust line and reduced weight and drag since no pylon is required and embedded nacelles entail less wetted surface. Furthermore, the same thrust can be archived with smaller engines and nacelles, leading to further weight and drag reduction, in turn smaller required wing area and, therefore, again reduced weight and drag [
6,
9].
BLI can also be seen as an alternative way to achieve a very low specific thrust without the sizing related challenges that arise from conventional propulsor designs with increasing bypass ratio and nacelle diameter [
10].
In
Figure 2, asymmetric (
Figure 2b) and full annular (
Figure 2c) boundary layer ingestion engine concepts are sketched to visualize integration with the aircraft structure and resulting inflow. A conventional podded configuration is drawn for reference (
Figure 2a).
In this study, we consider version 2 of the DFG Cluster of Excellence “Sustainable and Energy Efficient Aviation” (SE
A) mid range passenger aircraft, depicted in
Figure 3. Its conceptual design is outlined in [
11]; for more details refer to
Section 4.3. As opposed to a conventional mid-range aircraft with a twin-engine podded configuration, this aircraft features a fuselage tail mounted engine as well as two on-wing engines.
While the latter ones are subject to a circumferentially asymmetric inlet distortion (as illustrated in
Figure 4a; blue color represents areas of low momentum fluid), the tail engine ingests boundary layer fluid over the full annulus (FA,
Figure 4b). This neglects the effect of the T-tail empennage on the inflow conditions and does not consider cross wind conditions or effects from the aircraft angle of attack. According to [
10], for commercial transport aircraft, 60% to 70% of drag is of viscous nature. The fuselage is of particular interest for wake filling BLI propulsion because it induces almost half of that portion. If the wings of future aircraft designs are laminarized, that share can rise up to 70% [
13]. Two of the four boundary layer cases investigated in the present study also feature large proportions of the fuselage being laminarized, see
Section 4.1.
The advantage of a fuselage engine configuration is thus, that high amounts of boundary layer can be ingested with an rotationally symmetric distortion pattern, making an adapted fan design possible do minimize boundary layer induced aerodynamic losses while significantly increasing the propulsive efficiency. Fuselage tail engine concepts are, therefore, subject to various other ongoing research projects, most notably the NASA “STARC-ABL” project, see e.g., [
2,
14], as well as the Bauhaus Luftfahrt e. V. project “CENTRELINE”, e.g., [
10].
3. Parallel Compressor Model
The basic concept of a parallel compressor model is illustrated in
Figure 5. The fundamental idea of the PCM is to split a distorted compressor, here a fan, into two or more sub-compressors that are modeled independently. Each sub-compressor operates over its full face at the local (distorted) conditions, which it represents from the main compressor. The resulting overall operating point and downstream conditions are then defined as the weighted average of the sub-compressors conditions. A physical quantity
, such as the total-to-total pressure ratio
and the isentropic efficiency
, is calculated as
where
represents the weighting of sub-compressor
i of
n. In a conventional PCM setup, this would represent the angular extend of each sector.
is acquired from the undistorted compressor performance map at the distorted inflow conditions. In the case of a BLI-induced distortion, the boundary layer region of lower inflow momentum implies a lower flow coefficient
than the undistorted area. The PCM acts as a computationally cost-efficient model to provide an estimate of a distorted turbomachine operating point.
A basic PCM was developed during a previous study [
12] to model asymmetric BLI fans by averaging over the boundary layer affected circumferential sector. It was combined with simplified intake and nozzle models and featured a pressure ratio adaption algorithm to calculate the
compared to a reference same-thrust free stream engine. Boundary layer data from XFOIL simulations (averaged boundary layer velocity, boundary layer edge velocity, as well as displacement and momentum thickness at a given position on a 2D wing profile representing a Blended Wing Body fuselage) was used to determine the angular extension and the averaged inflow conditions inside one single distorted sector.
The fan exit conditions for the distorted and the undistorted sector were determined from the global stage characteristic at a given rotational speed and averaged to estimate the total pressure ratio and efficiency of the distorted fan. The stage pressure ratio of the fan was then iteratively adapted until it delivered the desired thrust. For further details of the implementation see [
12].
This model includes various simplifications that introduce modeling errors. It neglects mass redistribution between the sections of divergent flow conditions and unsteady blade passing effects, as described and mitigated in [
15], and is not able to cover the dynamic response of the compression system to unsteadieness in inflow distortions as it is implemented e.g., in the DYNTECC code [
16]. Furthermore, inclusion of the inlet swirl is described in [
17]. For a comprehensive review of existing approaches in literature to partially mitigate this inaccuracies, see [
18].
The basic implementation does not resolve individual blade rows and is, therefore, not able to represent the distorted sector movement over the rotor row [
19]. Additionally, it introduces inaccuracies by (a) averaging the inflow conditions over the whole distortion affected section and (b) not taking the fan characteristics differing over the blade height into account. Those two inadequacies are to be overcome in the present paper and applied to a radially distorted BLI fan in order to estimate the power savings compared to a conventional propulsor configuration.
4. Radially Segmented Parallel Compressor Model
In this section, we describe the extension of the aforementioned PCM to an arbitrary number of radial segments with individual performance characteristics and inflow conditions, which is to be applied to model a fuselage tail engine. This acts as a step towards a general circumferentially and radially segmented PCM, which may then be able to model a variety of distortion configurations. Generating the radial characteristics as well as the applied fuselage boundary layer data is outlined in the following.
4.1. Fuselage Boundary Layer
Multiple boundary layer velocity profiles are considered during this study: A simple flat plate (FP) approach for turbulent flow [
20] and data from three different CFD studies carried out with the DLR TAU-Code by [
21]. TAU [
22] is a finite-volume-based Navier–Stokes solver and was utilized for compressible, steady state calculations on a hybrid mesh. 3D simulations of an axis-symmetric quarter segment of a mid-range aircraft fuselage were conducted for three different configurations. One fully turbulent (FT) simulation was carried out along with two included active laminar flow control (LFC).
The two LFC simulations featured boundary layer suction up to 70% () of the fuselage length and around 50% (), respectively. Forced transition was applied slightly downstream the end of the suction area. Studying the combined effect of LFC and BLI is of interest, as boundary layer suction as a drag reduction measure upstream of the engine reduces the degree of boundary layer ingestion, while, at the same time, requiring suction power and implying an additional weight of the suction system.
The development of the boundary layer thickness
over the fuselage length
l is plotted in
Figure 6 for all four considered cases. It also features markers for the fuselage positions up onto whom boundary layer suction is applied for the cases
and
.
The boundary layer profiles were evaluated for the marked engine position at 90% fuselage length, equal to . It can be seen that the flat plate simplification clearly underestimates the boundary layer thickness compared to the fully turbulent CFD calculation. Nevertheless, it is of interest how high the impact of that difference on the PCM models predictions is.
The boundary velocity of the CFD simulations was averaged in the circumferential direction and normalized with the far field velocity
of the CFD simulations. These are plotted in
Figure 7. Normalizing the data, as was similarly performed in [
2], was necessary to apply it to different altitude and Mach number conditions, but does introduce modeling inaccuracies.
As can be seen in
Figure 7, the flat plate results already highly differ from the fully turbulent CFD simulation. As expected, the upstream boundary layer suction results in less extended near wall areas of low velocity. Due to the conical shape of the rear fuselage (see
Figure 6), flow is decelerated, and thus the boundary edge velocity for the CFD cases does not equal the far field velocity at the engine position.
4.2. Radial Fan Map
For this study, the Coordinated Research Centre 880 (CRC880) fan stage [
23] for the CRC880 engine [
24] was considered. This fan stage represents an UHBR design featuring one rotor and one stator row. CFD solutions for the design speed line (3074/
) from [
23] where evaluated over the channel height. They were carried out stationary with the commercial Navier–Stokes solver ANSYS CFX 17.0 on a structured grid, applying the
turbulence model. A pressure boundary condition was applied at the domain outlet.
Figure 8 depicts the resulting total-to-total pressure ratio
over the stage in radial resolution as well as the isentropic total-to-total efficiency,
, plotted over the relative channel height
h for the design point. The symbols
,
refer to the total pressure up- and downstream of the fan in accordance with [
4], while
a and
denote the real work and the work performed by the hypothetical isentropic reference process.
This radially resolved performance data was then divided into a discrete number
of equidistant radial segments. Averaging the segments performance data on each known operating point of the speed line results in radially resolved performance characteristics, as depicted in
Figure 9 for a number of five radial segments. The overall stage speed line is plotted for reference. Please note that the number of five segments is chosen for illustrative purposes here, while the results are later generated with ten radial segments, see
Section 5.1.
The fan map is then scaled in such a way that is set to the hub radius of a given fan geometry and at the tip radius , respectively. Note that the fan was not designed for an annular distortion and was not adjusted to these inflow conditions, even though this is possible for a full annular distortion.
The inflow conditions resulting from the fuselage boundary layer are similarly averaged within the defined segments. For a given flight operating point and number of radial segments, this leads to a discrete number
i of radial segments, as sketched in
Figure 4b for five segments. Each segment has vortex-free, individual inflow conditions
a segment-independent total temperature
, static pressure
p, and density
, and individual fan characteristics for constant rotational speed
used to determine each operating point
. This results in the downstream conditions
and
with the isentropic expansion factor
. Those are averaged following Equation (
5), to calculate an overall fan operating point. In addition to the common PCM simplifications described in
Section 3, this neglects interactions of the radial segments by independently calculating each radial operating point. The nozzle exit conditions are determined by assuming an adapted nozzle, and subsequently thrust, power propulsive power, and PSCs are calculated from Equations (
1)–(
4).
4.3. Reference Configuration
The aircraft configuration considered in this study is the V2 SE
A mid range reference aircraft featuring two wings and one tail fuselage engine (
Figure 3). The aircraft has a maximum takeoff weight of 69,000 kg, a design range for maximum payload of 3981
, and
wing span with an aspect ratio of 16. For details of the design please refer to [
11].
Only cruise is considered in the present study, which leads to an overall thrust requirement of and a Mach number of at an altitude of . The current design phase of the reference aircraft features an equal thrust split between the three engines, leading to a requirement of each.
is chosen similar to the dimensions of the tail engine from the NASA STARC-ABL project [
14]. Assuming the same specific thrust as the CRC880 engine for seizing leads to an outer diameter of the engine of
for the given flight conditions
. In
Figure 7,
is plotted to illustrate the position of the fan tip radius relative to the boundary layer velocity profile.
In the following section, the engine dimensions and flight mach number are set to the aforementioned values, while the mentioned values for F and A of the V2 SEA mid-range aircraft are referred to as the “reference case”. If not otherwise mentioned, the fully turbulent CFD boundary layer case is considered.
6. Conclusions and Outlook
We presented an implementation of a radially segmented parallel compressor model to describe a distorted fan. The model includes radially resolved fan characteristics and is able to estimate the fans reaction to inflow conditions differing over the channel height. A number of radial segments higher than ten was identified as not further changing the resulting overall operating point.
We applied the model to the fuselage tail engine of a mid range transport aircraft and calculated the power saving coefficient, which is 3.4% for the considered reference case. The fan efficiency as well as the resulting PSC highly depended on the fidelity of the applied boundary layer model and on the presence of upstream boundary layer suction. The accuracy of the employed boundary layer data was, therefore, identified as an essential prerequisite. To derive rules for concurrently applying both BLI and LFC, not only the varying boundary layer patterns but also other parameters and effects of the suction system need to be considered in future studies.
We aim to extend the presented PCM by general circumferential segmentation in following studies and plan to resolve individual blade rows. We intend to conduct the necessary model validation by means of extensive steady and unsteady CFD studies. In the future, the resulting PCM-based model would be able to analyze general symmetric and asymmetric BLI inflow distortions while taking sector movement over the rotor into account.
To obtain reliable quantitative results of the fuselage propulsion power saving, a dedicated, distortion adapted, fuselage fan needs to be designed. This includes adjusting the blade angles to the expected annular distortion. A radially segmented parallel compressor model can be part of that procedure.