1. Introduction
A multiple-input-multiple-output (MIMO) radar has multiple transmit antennas to transmit multiple probing waveforms. The multiple waveforms can be orthogonal or correlated [
1]. The waveform diversity offered by MIMO radar generates improved capabilities over the traditional phased-array radar in terms of target detection, identification, classification, and localization [
2]. MIMO radars can be grouped into widely-distributed [
3] and colocated [
4] MIMO radars. We focus on the colocated MIMO radars in this paper.
Based on the ability to probe with distinct waveforms, transmit beampattern design in colocated MIMO radar has become a popular research topic [
5]. By shaping the transmit beampattern, the radar radiation power can be properly managed to improve the energy efficiency, reduce the interference and increase the detection probability [
6,
7]. Thus, the waveforms should be optimally designed for the desired transmit beampattern, to control the radiation power distribution.
The related waveform design approaches can be divided into two categories. One category is a two-step strategy [
5,
8,
9], where the waveform covariance matrix is first optimized, then the transmitted waveforms, under practical constraints, are synthesized using the covariance matrix. For instance, the waveform covariance matrix was devised to match the desired pattern through the semi-definite quadratic programming (SDQP) technique [
5] and semi-definite programming (SDP) technique [
8], and then a cyclic algorithm (CA) was proposed in [
10], to synthesize the constant modulus waveform matrix to approximate the covariance matrix. Another category is to design the transmitted waveforms directly to fulfill a desired beampattern without the synthesis stage of the waveform covariance matrix [
11,
12,
13,
14,
15,
16]. In addition, independent waveforms [
17,
18] have been pre-processed with complex weights to form multi-rank beamformers to achieve the desired beampattern. However, this kind of method cannot guarantee equal power transmission from each antenna and a variety of desired beampatterns cannot be obtained.
Furthermore, the transmit beampattern design problem in more strict and practical situations is researched. Firstly, some works have paid attention to better approximating the desired beampattern by considering different aspects of the performance, such as the ripples within the energy focusing section, the attenuation of the sidelobes, the width of the transition band, the angle step-size, and the required number of transmit antennas [
19]. The peak sidelobe level or the integrated sidelobe level of transmit beampattern were taken as figures of merit in the beampattern design problem [
20]. Secondly, the robust design of waveform covariance matrices over steering vector mismatches and manifold vector perturbations [
9,
21] was studied. Thirdly, transmit beampatterns under spectral [
22] and spatial interference [
23] constraint have been considered. The work in [
24] focused on the signal-to-interference-plus-noise ratio (SINR) enhancement using transmitted waveform covariance matrix optimization in colocated MIMO radars. The sparse frequency waveform design problem for the desired transmit beampattern in spectrum-crowded environment was considered in [
25,
26].
The above existing beampattern matching design methods rarely consider the following two problems. Firstly, the waveforms cannot be generated easily, as the waveforms synthesized from the designed covariance matrix must be constrained to a constant envelope. Secondly, the beampattern designs, above mentioned, might result in waveforms with high peak sidelobe levels, and, generally, with an undesired ambiguity function behaviour. Aiming at the first problem, a correlated multicarrier linear-frequency-modulation (LFM) waveform set was designed in [
27], as the transmitted signals for the beampattern directly.
The obtained LFM waveforms have some advantages over the present waveforms, such as a constant-envelope and easy generation. Aiming at the second problem, the MIMO radar waveforms were synthesized for a desired beampattern in [
28], under the constant modulus and similarity constraints, where the similarity constraint exploited an LFM waveform as a benchmark, thus allowing the designed signal to share good ambiguity characteristics with the known LFM waveform. However, the method in [
27] did not consider the range sidelobe level or the ambiguity function of the designed waveforms, while the method in [
28] still suffered from the constraint of constant-envelope and easy-generation. Therefore, we develop a new solution for the two problems in the transmit beampattern design.
It is well known that the LFM signal, which is used in [
27,
28], has some outstanding characteristics, such as constant-envelope, easy generation, and good doppler tolerance [
29,
30,
31]. However, the correlated multicarrier LFM waveform set, proposed in [
27], has high grating sidelobes, which was demonstrated in [
32,
33]. The transmit beampattern design problem, formulated in [
27], did not consider the problem of sidelobes. Moreover, we found that the correlated multicarrier linear frequency modulation-phase coded (LFM-PC) waveforms are more general than the correlated multicarrier LFM waveforms, and can suppress the grating sidelobes directly [
34]. Therefore, we developed the transmit beampattern design problem with the constraint of the range sidelobe levels at different doppler frequencies by using the correlated LFM-PC waveforms. Compared with the method in [
28], our proposed method has the advantages of constant-envelope and easy-generation, and the proposed LFM-PC waveforms also provide a good waveform benchmark for the method in [
28].
In this paper, the constrained beampattern design problem is considered by using the correlated LFM-PC waveform set. The ambiguity function of the LFM-PC waveform set is devised, and it shows that the LFM-PC waveform set can inherit the advantages of both the LFM and PC waveforms, and weaken their disadvantages. Then, being founded from the temporal and spatial characteristics of LFM-PC waveforms, the range sidelobes and transmit beampattern are both affected by the frequency intervals, bandwidths, and the phase-coded sequences. Thus, by optimally designing these three waveform parameters of the LFM-PC waveform set, the correlation properties of waveforms are controlled and adjusted, to match the desired beampattern with the constraints of range sidelobe levels at different doppler frequencies.
The optimization process includes several steps. First, according to the desired transmit beampattern, the desired waveform covariance matrix is optimized via the convex (CVX) toolbox. Then, based on the desired covariance matrix, a bi-objective optimization problem is formulated, where the first objective function is the covariance matrix matching error, and the second objective function is the maximum range peak-to-sidelobe level (PSL) in the doppler and angle space. To solve this, we propose a strategy of two optimization stages. In the first stage, the beampattern and the PSL are jointly optimized. This stage ends when the beampattern performance and PSL performance both cannot become better. In the second stage, the beampattern is mandatorily optimized with a relaxed PSL performance.
Based on the sequence quadratic programming (SQP) [
35] and adaptive clonal selection (ACS) [
36] algorithms, we introduce the sequential iterative algorithm to synthesize the desired beampattern by enforcing the constraint of a good ambiguity function. The iterations split the bi-objective optimization problem into two single-objective optimization problems. Finally, we evaluate the performance of the proposed algorithm via numerical simulations in terms of the iteration process of optimization, synthesized transmit beampattern, range sidelobes, and the ambiguity function of designed waveforms. Our results highlight the superiority of the proposed algorithm.
To deal with the above issues, our contributions are given below:
The ambiguity function and characteristics of the LFM-PC waveform set are derived and analyzed, and its superiorities over both the LFM and PC waveform sets are demonstrated.
For other beampattern design methods, the waveforms are constrained to be constant-envelope and have to be synthesized by complex algorithms with a heavy computation load. However, in our proposed method, the designed LFM-PC waveforms corresponding to the desired beampattern is naturally advantageous with a constant-envelope and easy generation.
For other beampattern design methods, the temporal properties of the designed waveforms are rarely considered. In our proposed method, by using the LFM-PC waveform set to design the beampattern, the designed waveforms share good temporal characteristics of LFM-PC waveforms, such as a thumbtack ambiguity and low range sidelobes.
The constrained beampattern design problem is formulated as a bi-objective optimization problem. To solve it, a novel strategy of first joint optimization then mandatory optimization is proposed. The beampattern performance is mandatorily guaranteed while the ambiguity function behaviour is also good.
The rest of this paper is organized as follows. The signal model and signal processing structure for the LFM-PC waveform set are given in
Section 2. The ambiguity function of the multicarrier LFM-PC waveform set is derived and discussed in
Section 3.
Section 4 presents the temporal-spatial characteristics analysis. The optimization process for the constrained beampattern design problem is demonstrated in
Section 5. Simulation results are given in
Section 6. Finally,
Section 7 concludes the paper.